Other Publications of AGRICULTURAL SITUATION IN INDIA · and Productivity in Karnataka State-Anandu...
Transcript of Other Publications of AGRICULTURAL SITUATION IN INDIA · and Productivity in Karnataka State-Anandu...
Agricultural Situationin India
VOL. LXXIII February, 2017 No.11
CONTENTS
PAGES
FARM SECTOR NEWS 1
GENERAL SURVEY OF AGRICULTURE 7
ARTICLES
AGRO-ECONOMIC RESEARCH
Impact of National Food Security Mission (NFSM) on InputUse, Production, Productivity and Income in Tamil Nadu-K.Jothi Sivagnanam-AERC., University of Madras, Chennai
COMMODITY REVIEWS
Foodgrains 39
COMMERCIAL CROPS :
Oilseeds and Edible oils 41
Fruits and Vegetables 41
Potato 41
Onion 41
Condiments and Spices 41
Raw Cotton 41
Raw Jute 41
Editorial Board
ChairmanS. K. Mukherjee
EditorP. C. Bodh
Addl. Economic AdviserYogita Swaroop
Economic OfficerProsenjit Das
Officials Associated in Preparation of thePublication
D.K. Gaur — Sub-EditorS.K. Kaushal — Tech. Asstt. (Printing)
Uma Rani — Tech. Asstt. (Printing)Shripal Singh MTS
Cover Design By:Yogeshwari Tailor— Asstt. Graph
Publication DivisionDIRECTORATE OF ECONOMICS
AND STATISTICS
DEPARTMENT OF AGRICULTURE, COOPERATION & FARMERS WELFARE
MINISTRY OF AGRICULTURE & FARMERS
WELFARE
GOVERNMENT OF INDIA
C-1, HUTMENTS, DALHOUSIE ROAD,NEW DELHI-110 011PHONE : 23012669
(Email: [email protected])
SubscriptionInland Foreign
Single Copy : `40.00 £ 2.9 or $ 4.5Annual : `400.00 £ 29 or $ 45
Available from
The Controller of Publications,Ministry of Urban Development,
Deptt. of Publications,Publications Complex (Behind Old Secretariat),
Civil Lines, Delhi-110 054.Phone : 23817823, 23819689, 23813761,
23813762, 23813764, 23813765(Email: [email protected])
©Articles Published in the Journal cannot bereproduced in any form without the permissionof Economic and Statistical Adviser.
Growth and Instability Analysis of Coconut Area, Productionand Productivity in Karnataka State-Anandu Bhovi and PushpaM. Savadatti
Seasonality and Exponential Smoothing Models for PriceForecasting of Rice in Selected Market of Uttar Pradesh-Meeraand Hemant Sharma
Cotton Acreage Response to Price in Tamil Nadu – A FunctionalAnalysis-Dr.R.Meenakshi
11
18
23
30
The Journal is brought out by the Directorateof Economics and Statistics, Ministry ofAgriculture & Farmers Welfare, it aims atpresenting an integrated picture of the foodand agricultural situation in india on monthto month basis. The views expressed are notnecessarily those of the Government of India.
NOTE TO CONTRIBUTORS
Articles on the State of Indian Agriculture andallied sectors are accepted for publication in theDirectorate of Economics & Statistics,Department of Agriculture, Cooperation &Farmers Welfare’s monthly Journal “AgriculturalSituation in India”. The Journal intends to providea forum for scholarly work and also to promotetechnical competence for research in agriculturaland allied subjects. Good articles in Hard Copyas well as Soft Copy ([email protected])in MS Word, not exceeding five thounsand words,may be sent in duplicate, typed in double spaceon one side of foolscap paper in Times NewRoman font size 12, addressed to the Editor,Publication Division, Directorate of Economicsand Statistics, M/o Agriculture & Farmers Welfare,C-1, Hutments Dalhousie Road, New Delhi-110011 along with a declaration by the author(s) thatthe article has neither been published norsubmitted for publication elsewhere. The author(s) should furnish their e-mail address, Phone No.and their permanent address only on theforwarding letter so as to maintain anonymity ofthe author while seeking comments of the refereeson the suitability of the article for publication.
Although authors are solely responsible forthe factual accuracy and the opinion expressed intheir articles, the Editorial Board of the Journal,reserves the right to edit, amend and delete anyportion of the article with a view to making itmore presentable or to reject any article, if notfound suitable. Articles which are not foundsuitable will not be returned unless accompaniedby a self-addressed and stamped envelope. Nocorrespondence will be entertained on the articlesrejected by the Editorial Board.
An honorarium of Rs. 2000/- per article ofatleast 2000 words for the regular issue andRs. 2500/- per article of at least 2500 words forthe Special/Annual issue is paid by the Directorateof Economics & Statistics to the authors of thearticles accepted for the Journal.
Disclaimer: Views expressed in the articles andstudies are of the authors only and may notnecessarily represent those of Government ofIndia.
Soft copy of the journal may be seen in PDF at thefollowing URL : eands.dacnet.nic.in/publication.htm
We are pleased to inform that our monthly journalAgricultural Situation in India has been accredited bythe National Academy of Agricultural Sciences (NAAS)and it has been given a score of 3.15 out of 6. The scoreis effective from January, 2017 onwards. The score maybe seen in the following website: www.naasindia.org
STATISTICAL TABLESPAGES
Wages
1. Daily Agricultural Wages in Some States—Category-wise.
1.1. Daily Agricultural Wages in Some States—Operation-wise.
Prices
2. Wholesale Prices of Certain Important AgriculturalCommodities and Animal Husbandry Products at Selected Centres in India.
3. Month-end Wholesale Prices of Some ImportantAgricultural Commodities in International Market duringthe year, 2016.
Crop Production
4. Sowing and Harvesting Operations Normally in Progressduring March, 2017.
Abbreviations used
N.A. — Not Available.
N.Q. — Not Quoted.N.T. — No Transactions.N.S. — No Supply/No Stock.
R. — Revised.M.C. — Market Closed.N.R. — Not Reported.
Neg. — Negligible.Kg. — Kilogram.Q. — Quintal.
(P) — Provisional.Plus (+) indicates surplus or increase.Minus (–) indicates deficit or decrease.
43
44
46
48
50
February, 2017 1
Farm Sector News
Source:www.pib.nic.in
Cabinet approved MoU between India and Kenya onbilateral cooperation in the field of agriculture and alliedsectors
The Union Cabinet chaired by the Prime Minister ShriNarendra Modi has approved signing of a Memorandumof Understanding (MoU) between India and Kenya onbilateral cooperation in the field of agriculture and alliedsectors.
The MoU covered various activities in these fieldswhich include agricultural research, animal husbandry anddairy, livestock and fisheries horticulture, natural resourcemanagement, post-harvest management and marketing, soiland conservation, water management, irrigation farmingsystems development and integrated watersheddevelopment integrated pest management, agriculturalplant, machinery and implements, sanitary andphytosanitary issues.
The MoU provided for constitution of a JointWorking Group comprising of representatives from bothcountries, the task of which would be to develop detailedcooperation programmes and monitor implementation ofthe MoU.
The MoU entered into force since the day of signingand shall remain valid for a period of five years and shallautomatically be renewed for a subsequent period of fiveyears unless either Party notifies the other in writing, sixmonths before the expiry of the validity period of theintention to terminate it.
Cabinet approved MoU between India and Portugal in thefield of agriculture and allied sectors
The Union Cabinet, chaired by the Prime Minister ShriNarendra Modi had given its approval for signing of anAgreement for cooperation in the field of Agriculture andallied sectors between India and Portugal.
The Agreement covered various activities in thesefields which include exchange of scientific and technicalinformation, trade in plants and plant products, exchangeof information in phytosanitary issues, trainingprogrammes, seminars and visits of experts andconsultants.
The Agreement provided a constitution of a JointWorking Group comprising of representatives from bothcountries, the task of which would be to monitor theimplementation of the present MoU and making concreteproposals for agriculture cooperation and develop
guidelines and priorities for future cooperation in the fieldof agriculture and allied sectors.
The Agreement entered into force since the date ofits signing and shall remain in force for a period of fiveyears and shall be automatically extended for a subsequentperiod of five years unless either Party gives written noticethrough diplomatic channels to the other Party of itsintention to terminate the Agreement at least six monthsbefore its expiration.
Employment opportunities generated for the skilled youthin the fields of agri-warehousing, cold chains, supplychains, dairy, poultry, meat, fisheries, horticulture,agricultural mechanization as well as micro-irrigation:Agriculture and Farmers Welfare Minister
Shri Radha Mohan Singh said that due to the sophisticateddevelopment in agriculture sector, employmentopportunities have been generated for the skilled youthin the fields of agri-warehousing in agriculture, coldchains, supply chains, dairy, poultry, meat, fisheries,horticulture, and agricultural mechanization as well asmicro-irrigation. The youth are benefitting from theseopportunities. Shri Singh further said that self-employmentopportunities also have been enhanced in these fieldswhich require skilled youth. Shri Singh added that such aunique scenario has never been observed before in respectof overall development in the various fields of agriculture.Union Agriculture & Farmers Welfare Minister stated thison the occasion of National Workshop on SkillDevelopment in Agriculture and the theme was "KausalVikas se Krishi Vikas" on 5th January, 2017.
Shri Radha Mohan Singh informed that Ministry ofAgriculture & Farmers Welfare is working with fast paceto give reality to the motto raised by Hon'ble Prime Minister,Sh. Narendra Modi, as Kaushal Bharat - Kushal Bharat.Agriculture Minister said that Hon'ble Prime Minister hascalled for farmer focused agriculture, apart from productionfocused agriculture. The government realizes that theyouth of the country are required to be linked withagriculture in the form of enterprise. Shri Singh furtheradded that, in this respect operations are being conductedon four stages in Ministry of Agriculture. The Ministerbriefed that particular emphasis is being laid onenhancement of productivity, post harvest management,better return of farmers produce, and decrease inagriculture related risks. Shri Singh further emphasized
2 Agricultural Situation in India
that a fourth stage is being created so as to enhance theincome of the farmers through the resources like those ofhorticulture, livestock, fisheries, bee-keeping etc.
Shri Singh briefed that the Ministry of Agricultureand farmers welfare is opening ways while formulatingwell planned strategy for the development of farmers aswell as youth and initiatives like Pradhan Mantri FasalBima Yojana, e-NAM, Soil Health Card, Prampragat KrishiVikas Yojana, Pradhan Mantri Krishi Sinchai Yojana, SkillDevelopment would prove important in this endeavour.Shri Singh said that the Ministry has made a budgetprovision of Rs.3.52 crore for the year 2016-17 forimplementation of the work of skill development so thattraining programmes may be organized through 100 KrishiVigyan Kendras and distinguished training institutes ofthe Ministry.
Agriculture Minister said that various schemes hadbeen launched to increase the income of the farmers i.e.,Prampragat Krishi Vikas Yojana for bringing more areaunder organic farming, National Agriculture Market (e-NAM) for providing remunerative price for the farmers.The government is emphasizing on increase in milkproduction through White Revolution and fish productionthrough Blue Revolution. Shri Singh said that food securityis ensured through various schemes such as PradhanMantri Krishi Sinchai Yojana, per drop more crop for waterconservation, Water Management, Water Harvesting andMicro-irrigation. Rashtriya Gokul Mission has beenlaunched for the first time for the development andprotection of bovine breeds so that bovine breed can beprotected and developed. In 'Mera Gaon Mera Gaurav',Agriculture Specialists of Agricultural Universities andICAR are making effective interventions towards scientificfarming for villages. Agriculture Minister said that sowingof Rabi this year is more than 6 per cent than the previousyear. Under Soil Health Card, a total of 2 crore 30 lakh soilsamples have been collected in the country and from which12 crore 65 lakh farmers would be issued Soil Health Cards.On this occasion, the Shri Singh requested Sector SkillCouncil established at State level to cooperate with theCentral Government.
Speaking on the concluding session, The Ministerof States for Agriculture and Farmers Welfare, ShriSudarshan Bhagat said that the National Workshop onskill development in Agriculture is an important andcommendable effort. Shri Bhagat said that Centre is fullycommitted for skill development training for the youth ofrural areas. The Minister of State hoped that states wouldextend their full support to the centre in this effort.
Ministry of Agriculture and Farmers Welfare took Stepsto Promote Cashless Transactions
Ministry of Agriculture and Farmers Welfare had takenseveral decisions to promote cashless transactions in the
entire country. It was decided in the meeting of higherofficers of DARE/ ICAR in Ministry of Agriculture andFarmers Welfare that awards would be given to theInstitutes/ KVKs/ Universities for cashless transactionsunder specific time limits.
Ministry had decided that award of Rs. 5 lakh meantfor ICAR and a sum of Rs. 1 lakh to KVK would be givenfor achieving 100% cashless in a week. Similarly, ICARwould be bestowed upon Rs. 3 lakh and KVK Rs. 50,000 inthe form of incentives on achieving 100% cashless withintwo weeks and similarly for cashless within a span of 3weeks, ICAR would be awarded Rs. 2 lakh and KVK Rs.25,000 as prize.
India and Israel committed to strengthen bilateralrelations in the field of Agriculture
Union Agriculture and Farmers Welfare Minister, ShriRadha Mohan Singh met Israeli delegation led by theAgriculture and Rural Development Minister of Israel on11th January, 2017, Shri Uri Ariel discussed issues relatingto bilateral cooperation in agriculture between India andIsrael. Both sides expressed satisfaction over the progressmade in cooperation in the agriculture and allied sectorsbetween the two countries.
Both sides expressed their commitment to furtherstrengthen bilateral relations in the field of Agriculturewhich is manifested by the fact that the third phase ofAction Plan for 2015-18 in the field of Horticulture hasrecently been finalized by the two countries. Under thisprogram, as many as 27 Centres of Excellence (CoEs) inthe cultivation of various fruits and vegetables, in 21states, are being set up, out of which 15 CoEs are complete.
Further, both sides expressed the hope that whilecontinuing, the two countries could embark upon newerareas of cooperation at the Government to Governmentand Business to Business levels between the two countriesso as to further enhance the relationship.
The Farmers Training Centre and Regional Officebuilding would strengthen the coconut cultivation andindustry in the State: Shri Radha Mohan Singh
Shri Radha Mohan Singh said that Central Government isbound to promote the coconut cultivation and relatedactivities in Bihar. Shri Singh told that since 2014, a totalamount of Rs 409.06 lakhs had been sanctioned forimplementing the schemes on Coconut cultivation in Bihar.Union Agriculture Minister said this on the occasion ofFoundation Stone laying ceremony of Farmers TrainingCentre and Regional Office building at Patna on the 37thFoundation day of Coconut Development Board.(CDB).Coconut Development Board was established on12 January 1981.
Union Agriculture Minister told that Regional Officeof the Coconut Development Board was shifted to
February, 2017 3
Guwahati, Assam from Patna, Bihar on the basis ofrecommendations of a committee constituted under thechairmanship of ICAR in 2009. A central team wasconstituted by the Central Government focussing on theproductivity of coconut in Bihar. This team hadrecommended opening a new and fourth Regional Officeof the Board at Patna in place of State Centre Patna whichwas agreed upon by the Coconut Development Board inits 119th Board meeting held on 30.01.2015.
Shri Singh said that Kosi region in North Bihar whichcomprises of places on either sides of the Kosi river issuitable for coconut cultivation. It is estimated that nearly50,000 hectares of potential area in Bihar is available forcoconut cultivation, mainly in North Bihar under irrigatedcondition. Union Agriculture Minister said that CDB aimsto equip the coconut farmers in production, processing,marketing and export of coconut and its value addedproducts thus making India the world leader in production,productivity, processing for value addition and export ofcoconut. Bihar belongs to nontraditional coconutcultivated area and special focus is being given fordevelopment of coconut sector in the state.
To encourage farmers for increasing milk production, itis imperative that milk collection facilities need to beupgraded and farmers should be given remunerativeprices for their produce: Shri Radha Mohan Singh
Union Minister of Agriculture and Farmers Welfare, ShriRadha Mohan Singh said that milk production has becomea major economic activity amongst rural households andfarmers are adopting dairying along with agriculture foraugmenting their incomes. Shri Singh stated this on 13thJanuary, 2017, during the inter-session meeting of theParliamentary Consultative Committee of Ministry ofAgriculture and farmers welfare in New Delhi.Implementation of National Dairy Plan was also discussedduring the meeting.
Shri Singh informed that about 70 million ruralhouseholds are engaged in milk production. The smalland marginal farmers & landless labourer produce aboutone to three litres of milk per day and are responsible forproduction of most of the milk for the country. About 78percent farmers in India are small and marginal, who ownabout 75 percent of female bovine but own only 40 percentfarm land. Milk contributes to one third of gross incomeof rural households and in case of landless, its contributionis half in their gross income.
Agriculture Minister further informed that Indiacontinues to hold the number one position among milkproducing nations of the world since 1998. India haslargest bovine population in the world (18.4 percent share).Milk production in India has increased from 22 milliontonne in 1970 to 156 million tonne in 2015-16, which showsa growth of 700 percent during last 46 years. As a result,
the per capita availability of milk in India is 337 gram/dayas compared to average world per capita availability of229 gram/day.
Shri Singh said that during last two years 2014-16,milk production has registered a growth rate of 6.28 percent,which is more than last year growth rate of about 4 percentand more than three times higher than the world growthaverage of 2.2 percent. If wheat and paddy is combinedtogether, even then, in Gross Value Addition (GVA) ofRs.4.92 crore in 2014-15, the contribution of milk is morethan 37 percent. About 54 percent of milk produced in thecountry is surplus, out of which about 38 percent ishandled by the organized sector. The Co-operatives andprivate dairy organizations have equal share in it. ShriSingh said that women participation in dairying is about70 per cent.
Union Agriculture Minister added that in order toencourage the farmers for increasing milk production, it isimperative that milk collection facilities need to be upgradedand farmers should be given remunerative price for theirproduce. This is possible only when an effectivemanagement system is in place to link the farmers to themarket. Shri Singh said that BPL households, small andmarginal farmers would be encouraged to rear descriptindigenous breeds.
Shri Radha Mohan Singh also said that the NationalBovine Breeding and Dairy Development Programme(NPBBDD) has been started in 2014-15 by converging fourexisting programmes. The objective of this programme isto prepare a comprehensive and scientific programme tomeet the increasing demand for milk. The programme hastwo components - National Bovine Breeding programme(NPBB) and National Dairy Development Programme(NPDD). The NPBB focusses on expanding field coveragefor artificial insemination network, monitoring ofprogrammes for indigenous breed development andconservation in the breeding areas. The NPDD is focusingon creating and strengthening of infrastructure for milkunions/federations for production, procurement,processing & marketing of milk and training of dairy farmersand extension.
India & Mauritius Signed MoU for Cooperation in thefield of Cooperatives
The Union Minister of Agriculture and Farmers Welfare,Shri Radha Mohan Singh and Minister of Business,Enterprise and Cooperatives, Govt. of Mauritius,Shri Soomilduth Bholah signed on MoU for Cooperationin the field of Cooperatives & related areas on 16th January,2017. The MoU would enable the two countries tocollaborate in this vital sector and can significantly benefitthousands of Mauritians.India offered to exchange itsexpertise and technology with Mauritius in agro industry,fisheries and dairy sector.
4 Agricultural Situation in India
The two ministers expressed satisfaction at thehistoric, time-tested relationship between India andMauritius which is anchored in linkages of culture andancestry has grown from strength to strength over theyears, adding that frequent high level visits have addedsignificant momentum to the bilateral relationship betweenthe two countries.
Shri Radha Mohan Singh led a delegation to Germany forparticipation in the Global forum for Food & Agricultureand G-20 agriculture ministers meeting
Union Minister of Agriculture & Farmers Welfare,Shri Radha Mohan Singh led a five member delegation toGermany for participation in the Global Forum for Food &Agriculture from 19-21 January,2017 and G-20 AgricultureMinisters Meeting on 22nd January,2017 in Berlin,Germany.
The Global Forum for Food and Agriculture is anInternational Conference organized by Germany during19-21, January 2017 in Berlin on the subject "Agricultureand Water - Key to Feeding the World" which wasattended by Agriculture Ministers of 65 countries. G-20Agriculture Ministers meeting, scheduled for January 22,2017 focused on the theme of "Agriculture & Water -Digitalization in the Agriculture Sector" and bring togetherMinisters from the world's twenty biggest economies todiscuss the way ahead for the global agricultural sector.
During the visit, the Agriculture & Farmers WelfareMinister addressed the participants of the 9th BerlinAgriculture Ministers' Conference under the aegis of GFFAas well as the G-20 Agriculture Ministers meeting. TheMinister also delivered the inaugural address at the ExpertPanel convened as part of the GFFA meeting, apart frombilateral meetings with his counterparts from othercountries including Germany, Mexico and Lithuania.
During the visit, Shri Singh highlighted India'sinitiatives in the areas of Agriculture and Water includingsuch flagship programme as Soil Health Card scheme andPradhan Mantri Krishi Sinchayee Yojana (PMKSY) forimproving soil fertility and water use efficiency to achieve'more crop per drop' in a focused manner and extendingthe coverage of precision irrigation 'Har Khet Ko Pani.The Minister also showcased India's initiatives in the useof digital technology for the benefit of our farmers includingthe e-NAM scheme, the Kisan Call Centre, digital paymentinitiatives and other measures to bridge the digital dividein India's rural and agricultural sectors.
During the conference held on 21st January, 2017,Shri Singh said that water is certainly the most criticalresource for agriculture, gaining primacy even on otherimportant inputs like soil. The competing use of water foragriculture and non-agricultural purposes, inefficient
irrigation practices, injudicious use of pesticides, poorconservation infrastructure, and lack of governance havelead to increasing water scarcity and pollution worldwide.
Union Agriculture & Farmers Welfare Minister alsoinform that distribution of water resources across the vastexpanse of the country is uneven, therefore, as incomesrise the need for water also raises. Shri Singh said that asper the international norms, a country is classified as WaterStressed and Water Scarce, if per capita / year wateravailability goes below 1700 m3 and 1000 m3, respectively.With 1544 m3 per capita / year water availability, India isalready a water-stressed country and moving towardsturning water scarce.
Shri Singh further added that efficient use ofirrigation water requires application of water on growingcrops at appropriate times and in adequate amounts andthe main task will be to (i) produce more from less water byefficient use of utilizable water resources in irrigated areas,(ii) enhance productivity of challenged ecosystems, i.e.,rainfed and water logged areas, and (iii) utilize a part ofgrey water for agriculture production in a sustainablemanner.
Agriculture & Farmers Welfare Minister informedthat most of the irrigation projects are operating at levelsbelow the achievable efficiency of more than 50 per centand there is enormous scope to improve the productivityand efficiency of irrigation systems which can be achievedboth by technological as well as social interventions. ShriSingh said that it is estimated that with 10 per cent increasein the present level of efficiency in irrigation projects, anadditional 14 million hectare area can be irrigated from theexisting irrigation capacities which would involve a verymodest investment compared to what is required forcreating equivalent potential through new schemes.Therefore, there is need to adopt an integrated approachwith emphasis on greater conservation and enhanced wateruse efficiency.
Union Minister of Agriculture and Farmers Welfaresaid that though India is among the leading producers offoodgrains in the world but India's productivity vis-à-visworld average and highest yield (kg/ha) for major cropssuch as cereals, pulses, oilseeds, sugarcane and vegetablesremains short of the highest levels achieved elsewhere inthe world, except castor, an industrial oil crop. India hashighest courage, production and productivity of castor inthe world mainly because of hybrid technologies and wateruse efficiency in castor. Similarly, in livestock sector also,despite India being the top producer of milk, bovineproductivity is only 1538 kg per year as compared to theworld average of 2238 kg per year. The low productivitylevels also indicate existence of enormous untappedpotential. Shri Singh further said that efficiency-mediatedimprovement in productivity is the most viable option to
February, 2017 5
raise production. Development of new crop varieties withmore efficient photosynthesis and shorter duration wouldbe of immense help in increasing cropping intensity.
Shri Singh said that there are several technologiesdeveloped by our institutions that enable production of'more crop per drop'. Adoption of Resource ConservingTechnologies (RCTs) lead to an improvement inproductivity compared to traditional hand transplantingat different locations. The prevailing farming situation inIndia calls for an integrated effort to address the emergingissues / problems. However, these integrated farmingsystems are required to be location specific and designedin such a manner that they lead to substantial improvementin energy efficiencies at the farm and help in maximumexploitation of synergies through adoption of close cycles.The Minister added that these systems also need to besocially acceptable, environment friendly and economicallyviable.
Cabinet approved MOU between India and United ArabEmirates for cooperation in the field of agriculture andallied sectors
The Union Cabinet, chaired by the Prime Minister ShriNarendra Modi, had given its approval for Signing ofMemorandum of Understanding (MoU) between India andUnited Arab Emirates in the field of agriculture and alliedsectors.
The MoU would be mutually beneficial to bothcountries. It would promote understanding of bestagricultural practices in the two countries and will help inbetter productivity at farmer fields as well as improvedglobal market access leading to equity and inclusiveness.Cooperation in agricultural technology would lead toinnovative techniques for increasing production andproductivity leading to strengthening of food security.
The challenges of maintaining food and nutritionalsecurity need innovative solutions through collaborativeand coordinated polices- Shri Radha Mohan Singh
Union Agriculture & Farmers Welfare Minister, Shri RadhaMohan Singh addressed the G-20 Agriculture Ministers'Meeting on 22nd January, 2017 at Berlin, Germany. In hisaddress, the Minister said that India will continue to extendtheir support in early implementation of past commitmentsmade at the G20 Agriculture Ministers Meetings particularlyon Research and Development, collaboration andknowledge transfer, action to combat food loss and waste,and information and communication technologies (ICT).Shri Singh also supported the proposal of strengtheningof AMIS and underscores the importance of assessmentof stocks and suggests sharing of best practices in thisregard.
The Minister added that in India, ICT has proved tobe an effective and powerful medium to disseminate
information on agronomic practices, prices, fertilizer andpesticide use and weather and pest related advisories.Many new initiatives have been taken in order to developan integrated approach for communication process in theagricultural sector. These include: launch of agriculturalweb portals, mobile apps and a dedicated broadcastingchannel. Moreover, with the objective to reform theagriculture marketing system in the country, a NationalAgriculture Market (e-NAM) portal had been launchedwhich provides a pan-India electronic trading. This e-marketing platform is expected to help farmers in facilitatingbetter price discovery through efficient, transparent andcompetitive marketing platform; better marketing ofagricultural produce; reducing wastages; and gettingmarket related information and with access to large numberof buyers from within and outside the State throughtransparent auction processes.
Shri Singh said that in order to promote efficientirrigation practices in the country, a major irrigationprogramme was launched by the government in 2015 withemphasis on improving water-use efficiency through, waterconservation/ rainwater harvesting and use of micro-irrigation. The programme aims at providing end-to-endsolutions in irrigation supply chain, viz., water sources,distribution network and farm level applications andextension services on new technologies and information.The programme is being implemented in a mission modewith aim of completing 99 major and medium irrigationprojects with the capacity of 76.03 lakh hectare in a phasedmanner by December, 2019.
Cabinet approved Interest waiver for the two monthsof November and December, 2016 for farmers accessingshort term crop loans from Cooperative Banks and providedinterest subvention to National Bank for Agricultural andRural Development (NABARD) on additional refinanceby NABARD to Cooperative Banks
The Union Cabinet chaired by the Prime MinisterShri Narendra Modi gave its ex-post facto approval forinterest waiver for the two months of November andDecember, 2016 for farmers accessing short term crop loansfrom Cooperative Banks. The decision also provided forinterest subvention to National Bank for Agricultural andRural Development (NABARD) on additional refinanceby NABARD to Cooperative Banks.
Farmers in the whole of India availing short termcrop loans, from Cooperative Banks will be benefitted.
The decision intends to ensure availability ofresources with Cooperative Banks help farmers in easilyaccessing crop loans from Cooperative Banks to overcomethe difficulties in view of the reduction in availability ofcash for carrying out Rabi operations.
Additional resources are to be provided toCooperative Banks through NABARD for refinance to the
6 Agricultural Situation in India
Cooperative Banks on account of interest waiver of twomonths for November and December, 2016. This will beextended by Cooperative Banks to the farmers in thecurrent financial year 2016-17. An additional financialliability of Rs. 1060.50 crore would be required for thispurpose. A sum of Rs. 15, 000 crore allocated during 2016-17 to implement the Interest Subvention Scheme (ISS) hadalready been utilised.
Rabi Crops Sowing Crossed 637 Lakh Hactare
As per preliminary reports received from the States, thetotal area sown under Rabi crops as on 27th January 2017stands at 637.34 lakh hectares as compared to 600.02 lakhhectare this time in 2016.
Wheat has been sown/ transplanted in 315.55 lakhhectares, rice in 21.77 lakh hectares, pulses in 159.28 lakh
hectares, coarse cereals in 56.90 lakh hectares and areasown under oilseeds is 83.84 lakh hectares.
The area sown so far and that sown during last yearthis time is as follows:
(In lakh hectare)
Crop Area sown in Area sown in2016-17 2015-16
Wheat 315.55 292.52Rice 21.77 25.64Pulses 159.28 143.05
Coarse Cereals 56.90 60.24Oilseeds 83.84 78.58
Total 637.34 600.02
February, 2017 7
General Survey of Agriculture
Trends in foodgrain prices
During the month of December, 2016 the All India IndexNumber of Wholesale Price (2004-05=100) of foodgrainsdecreased by 0.34 percent from 290.2 in November, 2016 to289.2 in December, 2016.
The Wholesale Price Index (WPI) Number of cerealsincreased by 0.83 percent from 253.5 to 255.6 and WPI ofpulses decreased by 3.39 percent from 462.8 to 447.1 duringthe same period.
The Wholesale Price Index Number of wheatincreased by 2.73 percent from 245.0 to 251.7 while that ofrice decreased by 0.44 percent from 248.8 to 247.7 duringthe same period.
Weather, Rainfall and Reservoir Situation duringJanuary, 2017
Rainfall Situation
Cumulative Winter Season rainfall for the country as awhole during the period 1st January to 25th January, 2017has been 3% lower than the Long Period Average (LPA).Rainfall in the four broad geographical divisions of thecountry during the above period has been higher thanLPA by 49% in North-West India but lower than LPA by86% in Central India, 85% in East & North East India and15% in South Peninsula.
Out of total 36 meteorological sub-divisions, 02sub-divisions received large excess rainfall, 05 sub-divisionsreceived excess/normal rainfall, 04 sub-divisions receiveddeficient rainfall, 16 sub-divisions received large deficientrainfall and 09 sub-divisions received no rainfall.
Water Storage in Major Reservoirs
Central Water Commission monitors 91 major reservoirs inthe country which have total live capacity of 157.80 BillionCubic Metre (BCM) at Full Reservoir Level (FRL). Currentlive storage in these reservoirs (as on 25th January, 2017)is 80.60 BCM as against 63.47 BCM on 25.01.2016 (lastyear) and 80.71 BCM of normal storage (average storageof last 10 years). Current year's storage is higher than thelast year's storage by 27% and equal to normal storage.
Sowing Position during Rabi 2016-17
As per latest information available on sowing of crops,total area sown under Rabi crops in the country hasbeen reported to be 637.34 lakh hectares as compared to
600.02 lakh hectares during the same period of last year.This year's area coverage so far is higher by 37.3 lakh ha.than the area coverage during the corresponding periodof last year and 21.2 lakh ha. than the normal as on date.
Economic Growth*
As per the first revised estimates of national income,consumption expenditure, savings and capital formation,released by the Central Statistics Office (CSO) on January31, 2017, growth rate of Gross Domestic Product (GDP) atconstant market prices is placed 7.9 per cent in 2015-16and 7.2 per cent in 2014-15. The first advance estimates ofnational income released on 6th January 2017, based oninformation for the first seven to eight months of the currentfinancial year, estimated that the growth of GDP for theyear 2016-17 will be at 7.1 per cent.
The growth in Gross Value Added (GVA) at constant(2011-12) basic prices for the year 2016-17 is estimated tobe 7.0 per cent (as per 1st advance estimate), as comparedto 7.8 per cent in 2015-16 (first revised estimates). At thesectoral level, agriculture, industry and services sectorsgrew at the rate of 4.1 per cent, 5.2 per cent and 8.8 per centrespectively in 2016-17.
The share of total final consumption in GDP atcurrent prices in 2016-17 was at 71.3 per cent (as per 1stadvance estimate) as compared to 68.1 per cent (1st revisedestimate) in 2015-16. The fixed investment rate ratio ofgross fixed capital formation to GDP) declined from 29.2per cent (1st revised estimate) in 2015-16 to 26.6 per cent(as per 1st advance estimate) in 2016-17.
The saving rate (ratio of gross saving to GDP) forthe years 2015-16 was 32.2 per cent, as compared to 33.0per cent in 2014-15. The investment rate (rate of grosscapital formation to GDP) in 2015-16 was 33.2 per cent, ascompared to 34.2 per cent in 2014-15.
Agriculture and Food Management
Rainfall: The cumulative rainfall received for the countryas a whole, during the period 1st January - 18th January,2017, has been 1 per cent above normal. The actual rainfallreceived during this period has been 10.6 mm as againstthe normal of 10.5 mm. Out of the total 36 meteorologicalsub-divisions, 3 sub-divisions received large excessrainfall, 1 subdivision received excess rainfall, 2 sub-divisions received normal rainfall, 4 sub-divisions receiveddeficient rainfall, 17 sub-divisions received large deficientrainfall and the remaining 4 sub-divisions received norainfall.
*www.finmin.nic.in
8 Agricultural Situation in India
All India production of foodgrains: As per the 1st AdvanceEstimates (AE) released by Ministry of Agriculture& Farmers Welfare on 22nd September 2016, productionof kharif foodgrains during 2016-17 is estimated at 135.0million tonnes (Table 3), as compared to 124.1 million tonnesin 2015-16 (1st AE).
Procurement: Procurement of rice as on 17th January,2016 was 24.9 million tonnes during Kharif MarketingSeason 2016-17 whereas procurement of wheat was 23.0million tonnes during Rabi Marketing Season 2016-17(Table 4).
Off-take: Off-take of rice during the month of November,
2016 was 29.5 lakh tonnes. This comprises 27.1 lakh tonnesunder TPDS/NFSA and 2.4 lakh tonnes under otherschemes. In respect of wheat, the total off-take was 23.4lakh tonnes comprising 17.8 lakh tonnes under TPDS/NFSA and 5.6 lakh tonnes under other schemes. Thecumulative off-take of foodgrains during 2016-17 (tillNovember, 2016) is 45.6 million tonnes (Table 5).
Stocks: Stocks of foodgrains (rice and wheat) held by FCIas on 1st January, 2017 was 43.4 million tonnes, ascompared to 49.8 million tonnes as on 1st January, 2016(Table 6).
TABLE 1: GROWTH OF GVA AT BASIC PRICES BY ECONOMIC ACTIVITY (AT 2011-12 PRICES) (IN PER CENT)
Growth Rate (%) Share in GVA or GDP (%)Sector 2014-15 2015-16 2016-17 2014-15 2015-16 2016-17
(2nd RE) (I st RE) (AE) (2nd RE) (I st RE) (AE)
Agriculture, forestry & fishing -0.3 0.8 4.1 16.5 15.4 15.0
Industry 6.9 8.2 5.2 31.3 31.4 30.8
Mining & quarrying 14.7 12.3 -1.8 3.2 3.3 2.8
Manujfacturing 7.5 10.6 7.4 17.4 17.8 17.5
Electricity, gas, water supply & 7.2 5.1 6.5 2.2 2.1 2.2other utility services
Construction 3.0 2.8 2.9 8.5 8.1 8.2
Services 9.5 9.8 8.8 52.2 53.2 54.3
Trade, Hotel, Transport Storage 8.6 10.7 6.0 18.5 19.0 19.0
Financial, real estate & prof. servs 11.1 10.8 9.0 21.3 21.9 22.0
Public Administration, defence and 8.1 6.9 12.8 12.4 12.3 13.3
other services
GVA at basic prices 6.9 7.8 7.0 100.0 100.0 100.0
GDP 7.2 7.9 7.1 — — —
Source: Central Statistics Office (CSO). 2nd RE: Second Revised Estimates 1st RE: First Revised Estimates, AE: as per first advance
estimates of GDP released on 6th January, 2017.
TABLE 2: QUARTER-WISE GROWTH OF GVA AT CONSTANT (2011-12) BASIC PRICES (PER CENT)
Sectors 2014-15 2015-16 2016-17
Q1 Q2 Q3 Q4 Q1 Q2 Q3 Q4 Q1 Q2
Agriculture, forestry & fishing 2.3 2.8 -2.4 -1.7 2.6 2.0 -1.0 2.3 1.8 3.3
Industry 8.0 5.9 3.8 5.7 6.7 6.3 8.6 7.9 6.0 5.2
Mining & quarrying 16.5 7.0 9.1 10.1 8.5 5.0 7.1 8.6 -0.4 -1.5
Manufacturing 7.9 5.8 1.7 6.6 7.3 9.2 11.5 9.3 9.1 7.1
Electricity, gas, water supply & 10.2 8.8 8.8 4.4 4.0 7.5 5.6 9.3 9.4 3.5other utility services
Construction 5.0 5.3 4.9 2.6 5.6 0.8 4.6 4.5 1.5 3.5
Services 8.6 10.7 12.9 9.3 8.8 9.0 9.1 8.7 9.6 8.9
Trade, hotels, transport, 11.6 8.4 6.2 13.1 10.0 6.7 9.2 9.9 8.1 7.1communication and servicesrelated to broadcasting
February, 2017 9
Financial, real estate & 8.5 12.7 12.1 9.0 9.3 11.9 10.5 9.1 9.4 8.2
professional services
Public administration, 4.2 10.3 25.3 4.1 5.9 6.9 7.2 6.4 12.3 12.5
defence and Other Services
GVA at Basic Price 7.4 8.1 6.7 6.2 7.2 7.3 6.9 7.4 7.3 7.1
GDP at market prices 7.5 8.3 6.6 6.7 7.5 7.6 7.2 7.9 7.1 7.3
TABLE 3: PRODUCTION OF MAJOR AGRICULTURAL CROPS (1ST ADV. EST.)
Crops Production (in Million Tonnes)
2012-13 2013-14 2014-15 2015-16 2016-17(4th AE) (1st AE)
Total Foodgrains 257.1 265.0 252.0 252.2 135.0
Rice 105.2 106.7 105.5 104.3 93.9
Wheat 93.5 95.9 86.5 93.5 —
Total Coarse Cereals 40.0 43.3 42.9 37.9 32.5
Total Pulses 18.3 19.3 17.2 16.5 8.7
Total Oilseeds 30.9 32.8 27.5 25.3 23.4
Sugarcane 341.2 352.1 362.3 352.2 305.2
Cotton# 34.2 35.9 34.8 30.1 32.1
Source: DES, DAC&FW, M/o Agriculture & Farmers Welfare. 1st AE: 1st Advance Estimates of Kharif crops only, 4th AE: Fourth Advance
Estimates, # Million bales of 170 kgs. each.
TABLE 4: PROCUREMENT OF CROPS IN MILLION TONNES
Crops 2011-12 2012-13 2013-14 2014-15 2015-16 2016-17
Rice# 35.0 34.0 31.8 32.0 34.2 24.9$
Wheat@ 28.3 38.2 25.1 28.0 28.1 23.0$
Total 63.3 72.2 56.9 60.2 62.3 47.9
#Kharif Marketing Season (October-September), @ Rabi Marketing Season (April-March), $Position as on 17.01.2017Source: DFPD, M/o Consumer Affairs and Public Distribution.
TABLE 5: OFF-TAKE OF FOODGRAINS (MILLION TONNES)
Crops 2012-13 2013-14 2014-15 2015-16 2016-17(Till November)
Rice 32.6 29.2 30.7 31.8 24.0
Wheat 33.2 30.6 25.2 31.8 21.6
Total 65.8 59.8 55.9 63.6 45.6(Rice & Wheat)
Source: DFPD, M/o Consumer Affairs and Public Distribution.
Sectors 2014-15 2015-16 2016-17
Q1 Q2 Q3 Q4 Q1 Q2 Q3 Q4 Q1 Q2
10 Agricultural Situation in India
TABLE 6: STOCKS OF FOODGRAINS (MILLION TONNES)
Crops January 1, 2016 January 1, 2017
Rice 12.7 13.5
Unmilled Paddy# 19.9 24.2
Converted Unmilled Paddy in terms of Rice 13.3 16.2
Wheat 23.8 13.7
Total (Rice & Wheat) (1+3+4) 49.8 43.4
#Since September, 2013, FCI gives separate figures for rice and unmilled paddy lying with FCI & state agencies in terms of rice.
February, 2017 11
Articles
Growth and Instability Analysis of Coconut Area, Production and Productivity inKarnataka State
ANANDU BHOVI*AND PUSHPA M. SAVADATTI**
Abstract
This paper is an attempt to estimate trends in area,production and productivity of coconut which is animportant crop in the Karnataka State. The analysis hasbeen done for five major coconut producing districts ofKarnataka state and state as a whole based on the timeseries data for the period 1975-76 to 2009-10 usingappropriate growth models. Results of the data analysisindicate that, area and production registered significantgrowth in all the sample districts and state as a whole.Growth in area is higher than that of production growthbut growth rate of productivity was found to be stagnantduring the study period. Decomposition analysis indicatesthat percentage contribution of productivity towardsincreasing production of coconut was very meagre in allthe districts except in Chikmagalur and Dakshina Kannadadistricts. From the study, it is evident that there is a needto boost productivity of the coconut crop in the state inorder to increase overall production.
Introduction
Sustainable growth of the Indian economy depends onthe agriculture sector. Even today, agriculture plays a veryimportant role in the economic development as nearly halfof the rural population depends on agriculture for theirlivelihood. But over the years, Indian agriculture sector isexhibiting sluggish growth rate due to various riskschallenging the sector.
As a result, government of India identifiedhorticulture as a remedial alternative for the ailingagriculture sector. India, being blessed with diverse climaticconditions and soil, provides a vast potential for growthof the horticulture sector. Horticulture sector is gaininglot of importance in India due to its contribution to Indianeconomy in terms of income and employment generationto millions of people in rural areas. Horticulture cropscomprise of fruits, vegetables, potato, tropical tuber crops,medicinal and aromatic plants, spices and plantation crops,etc. Among horticulture crops, plantation crops are highvalued commercial crops because of their vital role in theIndian economy. These crops contribute to exportearnings, provide employment to many millions of people
and conserve the soil and ecosystem. Coconut is animportant plantation crop and provides employment tonearly 10 million people who depend on coconutcultivation, processing and related activities and henceplays a very important role in the Indian economy.
Coconut (Cocosnucifera L) is a versatile crop. It isoften referred as the'Kalpavriksha'(Tree of Paradise) inIndia because of its manifold uses. Coconut provides food,drink, fibre, fuel and shelter to the mankind, besides havingmany other end uses. It is grown in 93 countries of theworld. India, Indonesia, Philiphinnes and Shrilanka togethershared 77 percent of the world coconut area and 79 percentof the world coconut production.
India is the second largest coconut producer in theworld contributing 15730 million nuts1 from an area of 19lakh hectares (ha) with a maximum productivity of 8303nuts/ha during 2008-09 (Min of Agri,GOI).
Coconut crop is grown in many parts of India.Available secondary data on the crop indicates that Kerala,Karnataka and Tamil Nadu states together accounted for84.26 percent and 84.82 percent of the total coconut areaand production, respectively in the country during 2008-09. In terms of area (4.19 lakh hectares) and production(2176 million nuts), Karnataka state ranks second next toKerala state in the country with the yield of 5193 nuts/hain 2008-09 (Min of Agri, GOI). Over the period, the relativecontribution of Kerala state has shown a declining trendin both area and production of coconut crop. It declinedfrom 50.85 percent(1999-00) to 41.6 percent(2008-09) andfrom 42.6 percent to 36.88 percent in crop acreage andproduction, respectively. But, during the same period, thetrends in Karnataka state showed mixed picture. Thecoconut area increased from 18.17 percent in 1999-00 to22.11 percent in 2008-09 and that of production remainedconstant at 13.8 percent (Min of Agri, GOI).
There has been an impressive growth in coconutarea in Karnataka state during last four decades thoughyear to year fluctuations were observed both in area andproduction of coconut. Because of the economicimportance of the coconut crops and Karnataka state beingone of the important states in terms of area and production
*Research (Ph.D.) Scholar, Dept. of Economics, Karnatak University Dharwad, Karnataka;
**Professor, Dept. of Economic Studies and Planning, School of Business Studies, Central University of Karnataka, Gulbarga, Karnataka.
12 Agricultural Situation in India
of coconut crops, the present study is undertaken toexamine the status of coconut crops over the years interms of area, production and productivity in the Karnatakastate.
The specific objectives of the study are
(i) To analyse the trends in area, production andproductivity of coconut crop in major coconutproducing districts of Karnataka state,
(ii) To understand the magnitude of instability ofthese variables for the crop in question in thestudy districts and the state as a whole,and
(iii) To quantify the percentage contribution of areaand yield towards increasing the production ofcoconut in the major coconut growing districtsof the state.
Materials and Methods
a. Data base and period of the study
The study is based on annual time series data coveringthe period of 35 years viz, 1975-76 to 2009-10. Thesecondary data on area, production and productivity ofcoconut for five major coconut growing districts, namely,Tumkur, Hassan, Chitradurga, Chikmagalur, DakshinaKannada(DK) and Karnataka state, was collected fromDirectorate of Economics and Statistics, Government ofKarnataka and Directorate of Economics and Statistic,Ministry of Agriculture, Government of India, Delhi. During1981, Government of India took major initiative by settingup of Coconut Development Board (CDB) to promotecoconut production and marketing in the country. In viewof this, the study period (1975-76 to 2009-2010) was dividedin to two sub-periods to draw meaningful conclusionswith reference to the trends in area, production and yieldof coconut crop, as follows :
Period I - (1975-76 to 1980-81)
Period II - (1981-82 to 2009-10)
Period III (Overall period)- (1975-76 to 2009-10)
b. Methodology
To analyse the objectives of the study, differenteconometric techniques have been adopted and the sameare presented below.
1) Compound Growth Rates (CGR)
The compound growth rates have been calculated byfitting an exponential function in the following form(Krishnan and et.al-1991),
Yt = ABt ....................................................... (1)
Where,
Yt is dependent variable(area, production andproductivity of coconut in the year 't')
A and B are constant and regression coefficients,respectively.
t = time variable which takes the value 1= 1975–76,2 = 1977–78, 3 = 1978–79 ,……,
35 = 2009-2010
Taking natural logarithms (ln), to equation (1) weget
lnYt = lnA + lnB.t ................................ (2)
If lnYt = y∧, lnA = a∧, and lnB = b∧ then equation (2)becomes
y∧ = a∧ + b∧t ..................................... (3)
equation (3) is log-linear between y and t variablesrespectively, hence, this can be estimated by ordinary leastsquare (OLS) method. The compound growth rate (r) wasobtained by the following formula,
r = (antilog b∧ – 1).100
the significance of the growth rate was tested by applyingstudent 't' test statistic
2) Coefficient of Variation (C.V.)
The Coefficient of Variation (C.V.) defined as following(Krishnan etal.-1991) was used as a measure of instability
3) Decomposition Technique
To measure the contribution of area and productivitytowards increasing production of Coconut in the state,following simple decomposition method (Krishnan andet.al-1991) was employed.
P = A0 (Yn–Y0) + Y0 (An – A0 ) + ΔA.ΔY
Where, P is Change in Production, A0 and Y0 areArea and Yield in the base year, An and Yn are Area andYield in the current year, respectively, and ΔA and ΔY arechanges in area and yield, respectively.
4) Relative contribution
To examine relative contribution of crop acreage andproductivity to the increasing production, followingmethod (Krishnan and et.al-1991) has been used.
*In this paper, coconut and nut are used interchangeably.
February, 2017 13
Where,?P,?A and ?Y are changes in production, areaand yield, respectively.
Results and Discussions
a. Growth Rates of Area, Production and Productivityof Coconut
To understand the growth performance and relativecontribution of basic components of coconut productionin Karnataka state during the period 1975-76 to 2009-10,time series data on Area, Production and Productivity forfive major coconut growing districts in Karnataka andKarnataka state as a whole were analyzed.
The results are presented in table-1. It is clear fromthe table-1 that there was positive growth in theproduction of coconut (2.9 per cent) during sub period-I(1975-76 to 1980-81) at the state level which was significantat 1 per cent level. This increase in production of coconutwas mainly due to increased area under the crop (2.6 percent) during the period. Though yield also contributed tosome extent by showing positive growth but notsignificantly.The area expansion during this period wasmainly due to implementation of crop acreage developmentprogrammes, under the 5th Five year plan by Directorateof Coconut Development. Moreover, production andsupplying of hybrid and quality planting materials to thefarmers at subsidized price lead to further expansion inarea under coconut cultivation.
The district level results for period-I reveal thatgrowth rate in coconut production was highest inChitradurga District (5.079 percent) followed by DakshinKannada (3.85 percent), Hassan (3.1 percent),chikkamagalur (1.74 percent) and Tumkur (0.8 percent),respectively. Production growth rates are positive andsignificant in all the districts and at the state level. But thispositive growth in coconut production in all these districtswas due to significant increase in area rather than yieldwhich was showing negative growth rate in all the districtsexcept for chikkamagalur. During the period-I, yieldsuffered a lot. This was mainly due to lack of irrigationfacilities, poor disease and pest management practices incoconut gardens and meagre implementation ofproductivity enhancement programmes in the state ofKarnataka compared to other states, especially Kerala.
During the Period-II (1981-82 to 2009-10), the resultsshow that (table-1) area and production growth rates ofcoconut crop are positive and highly significant in all thesample districts and at the state level also, (exceptDhakshina Kannada district which show significant
negative growth in area and marginal positive growth inproduction) evident from the very low p values. Further, itis interesting to observe that productivity growth rateswere negative and significant in all the sample districtsand at the state level except in case of DK andChikkamagalur. Karnataka state witnessed remarkableincrease in production (3.15percent) because of expansionin crop acreage (3.38 percent), even though declining trendin productivity (-0.216 percent) is observed. This is mainlydue to rise in the supply of hybrid and quality plantingmaterials at the subsidized prices during period-II resultedin allocation of more area under the coconut crop. So, areagrowth rate was significant. At the district level, Tumkurdistrict topped the list by witnessing highest growth ratein production (3.6 percent) followed by Chikmagalur (2.79percent), Hassan (1.6 percent) and Chitradurga (1.59percent). This is because of increase in area under thecrop. As compared to the period-I, growth rates ofproduction of coconut in period-II are lower in all sampledistricts except Tumkur and chikmagalur. Further, it isimportant to notice that Dakshina Kannada districtregistered insignificant growth (0.11 percent) in productionwith marginal increase in productivity (0.82) which issignificant at 1 percent level. This was due to significantnegative growth rate (-0.7 percent) in area (at 5 percentlevel of significance). This was mainly due to geographicaldivision of the district (new Udupi district created fromthe Dakshina Kannada district). Hence, part of thegeographical area under coconut cultivation had gone toudupi district. The same production behaviour of coconuthad been reflected at the state level also.
During the overall period, Tumkur district hadregistered highest growth in production (3.2percent), dueto acreage expansion (3.9 percent) despite significantnegative growth in productivity. The Chikmagalur districtexhibited 2.6 percent growth in production followed byChitradurga 2.5 percent and Hassan 1.8 percent (table-1).Further, a sharp increase in production (0.68 percent) wasobserved in Dakshina Kannada at 5 percent level ofsignificance mainly due to increase in productivity (0.56percent) rather than increase in area (0.12 percent) whichwas insignificant. After 1981, Coconut Development Board(CDB) came into existence for implementing thedevelopment programmes like creating higher demand forcoconut, improving marketing conditions, assistingcoconut growers to get better prices for the product,providing financial and other assistance for coconutcultivation. Further, an effort has been made for thedevelopment of technologies for product diversification.On the other hand, giving assistance and suggestions toexpand irrigation facilities in the farm, supplying highyielding variety seeds, development of coconut basedindustries in the state collectively resulted in significantincrease in the states' coconut production (3.13 percent)and area (3.3 percent). But during this period, coconut
14 Agricultural Situation in India
palm affected by root (wilt) disease causing maximum yieldloss and insufficient crop management collectively holdback the coconut productivity in the state. Hence,insignificant negative growth rate was observed inproductivity (-0.2 percent) at the state level in period-III(19-76 to 2009-10) .
b. Instability in Area, Production and Productivity ofCoconut
In order to assess the consistency of growth, it becomesimperative to study the instability of the variables duringthe study period. Table-2 depicts the instability in area,production and productivity of coconut for sampledistricts. In period-I, productivity was almost stable in allsample districts of the state and the same was reflected atthe state level results. It is evident that the variation inproduction was mainly due to variation in area in alldistricts and the state. This happened due to less attentiongiven in impelmetation of productivity boost programmesduring this period in Karnataka state. The district levelresults indicated that Chitradurga witnessed highestvariation in both production and area expansion undercoconut in period-I, because there was not much areaexpansion under the crop in the beginning of this period,after 1979-80, it was observed that there had beentremendous increase in crop acreage in the state. Duringperiod-II, instability in area and production was highest inTumkur and Chikmagalur districts. Further, the district leveldata shows the spread of values around their mean valueis quite high in this period across all sample districts ascompared to the period-I. During the period-III, instabilityin area influences higher than that of productivity in thetotal variation in production and Tumkur district recordedhighest variation in area expansion (43 percent) andChikkamagalur district witnessed highest variation in bothproduction (50 percent) and productivity (28 percent)during this period. The state witnessed highest instabilityin production (38 percent) than that of area (33 percent)and productivity (12.5 percent), respectively.
c. Contribution of Area, Productivity and theirinteraction towards increase in Production ofCoconut
With the help of appropriate decomposition model(Krishnan and et.al-1991), percentage contribution of area,productivity and their interaction effect in production ofcoconut in five major coconut growing districts and stateas a whole was estimated and presented in table-3. Resultsof decomposition analysis revealed that during the period-I, percentage change in production in Karnataka state wasmainly through area expansion (84 percent), because ofhigh growth in area (2.6 percent). Productivity (14 percent)& interaction effects (2 percent) contributed meagerly tothe total output in the state. The same pattern wasobserved for all the sample distiricts where in areacontribution was the major source for production of
coconuts in Period-I. In the second period, Coconut Boardcame into existence to promote coconut productionactivities, alongwith government policies and research,as a result share of productivity has been increasedmarginally (from 14 to 16 percent) at the state level andcontribution of interaction effect increased from 2 to 23percent. The district level analysis indicated that thecontribution of area in total production decreasedcompared to period I and that of productivity increased.The area contribution ranged between 95 per cent (Tumkurdistrict) to 28 per cent (Chikmagalur district) and that ofproductivity varied between 2 percent to 37 percent.Interaction effect also contributed significantly to thecoconut production during period II ranging between 3percent (Tumkur district) to 38 percent (Chikmagalurdistrict). These trends occurred due to developmentalactivities that took place during this period that had somepositive impact on the productivity though not significant.In case of DK district, a great shift had taken place inperiod II as compared to period I. In the first period, totalchange in production was solely due to area change (100percent), but in the second period, it was shifted to theproductivity (105 percent), this happened because ofgeographical division of the district in 1998-99. During theperiod-III, it may be observed that at the state level areacontriubution is highest (62 percent) followed byinteraction effect (25 percent) and productivity effect (13percent). At the district level, marginal increase has beenfound in the contribution of productivity and theirinteraction effect in all districts, except Chikmagalur andDakshin Kannada district. In Chikmagalur, area effect (29percent) is less than that of productivity effect (34 percent)and their interaction effect (36 percent). In DakshinaKannada district, percentage contribution of productivity(66 percent) has recorded highest in the total output ofcoconut. This is not because of any cultivation practicesmade by the farmer or CDB, but because of geographicaldivision of district.
Conclusions
The discussion of the results reveal that in the period-I,area and production of the crop were increasingsignificantly but productivity experienced insignificantgrowth in the state. Even though after setting up of CDBand implementing many measures to increase area,production and productivity of the crop in the state;productivity witnessed insignificant negative growth ratein the period-II, though area and production showedsignificant growth which was higher than that of growthwitnessed in period-I. Further, the percentage contributionof area (84 percent) to the change in production of coconutwas higher than yield (14 percent) and their interactioneffect (only 2 percent) in pre-CDB period (period-I). Thisphenomenon changed in the period-II. The contributionof interaction effect (15 percent) and yield share increased(15 percent) marginally. However, it is observed that the
February, 2017 15
major variation in production was due to variation in areaunder the crop. But in Kerala, productivity effect was veryhigh in increasing production of coconut (Krishnan andet.al.).
The results of the study showed that in Karnatakastate during 1975-76 to 2009-10; area under coconutcultivation expanded (3.3 percent) significantly andproduction also showed a positive trend (3.1 percent), butproductivity exhibited very sluggish growth. Coconut is aplantation crop once sepal is planted, the gestation periodfor returns is around 6-7 years. This could be anotherreason for the low productivity along with insufficientattention given to implementation of productivityenhancement programmes effectively. Apart from this, highlabour cost, lack of human labour for land preperation andgarden maintenance and insufficient availabality of groundwater are some other reasons for decline in productivity.Though area and production of coconut have shownpositive trend during the study period, there is marginalincrease in the productivity of coconut. Despite theestablishment of CDB, not much improvement could beseen in productivity of coconut crop. Hence, it is felt thatthere is need to embrace the improved techonology incoconut cultivation. It is very essential to implementeffectively productivity boost programmes by CDB toincrease the productivity of coconut in major coconutgrowing distircts which are contributing to a great extentfor the economic development of those districts. Hence,based on the results, the study recommends for the needto boost productivity of coconut in Karnataka state.
References
Amerender Reddy A. (2005) "Growth and Instability inChickpea Production in India: A state levelAnalysis", Agricultural Situation in India, Vol: 62(9),P. 621- 629.
Devraj, Jha G.K., Hemant Kumar and Khare A.P. (2006)"An Analysis of Growth and Instability of Chickpea
(Gram) Production in Madhya Pradesh", AgriculturalSituation in India, Vol: 63(4), P. 251- 259.
Directorate of Economics and Statistics, Government ofKarnataka and Directorate of Economics andStatistic, Ministry of Agriculture, Government ofIndia, Delhi. Data Surce.
Indira Devi P., Thomas E.K. and Thomas J.K. (1990)"Growth and Supply Response of Banana in Kerala",Agricultural Situation in India, Vol: 45(4), P. 239- 242.
Jose C.T. and Jayashekar S. (2008) "Growth Trends in Area,Production and Productivity of Arecanut in India",Agricultural Situation in India, Vol: 66(3), P. 135- 140.
Krishnan M., Vashist A.K. and Sharma B.M. (1991)"Growth and Instability in Kerala Agriculture",Agricultural Situation in India, Vol: 45 (1), P. 21- 25.
Sadeesh J., Pouchepparadjou A., and Thimmappa K. (2006)"Growth and Instability Analysis of Major Oilseedsin India", Agricultural Situation in India, Vol: 63(3),P. 179- 189.
Sanjay Kumar D., Dhaka J.M. and Agarwal N.L. (2000)"Growth in Production of Important Pulse Crops inRajasthan",Agricultural Situation in India, Vol: 57(8),P. 453- 458.
Saraswathy P. and Thomas E.J. (1975) "Stochastic Modelsfor Explanation of Trend in Production of Rice inKerala" Agriculture Research Journal Kerala, Vol.13, No. 01, pp. 22-26.
Singh O.P. (1998) "Growth and Supply Response ofOilseeds in Uttar Pradesh", Agricultural Situation inIndia, Vol: 55(1), P. 3- 8.
Srivastava S.C., Sen C. and Reddy A.R. (2003) "AnAnalysis of Growth of pulses in Eastern UttarPradesh", Agricultural Situation in India, Vol: 59(12),P. 771- 775.
16 Agricultural Situation in India
TA
BL
E:
1 C
OM
POU
ND
GR
OW
TH
RA
TE
S O
F A
RE
A,
PRO
DU
CT
ION
AN
D P
RO
DU
CT
IVIT
Y O
F C
OC
ON
UT
IN
MA
JOR
CO
CO
NU
T G
RO
WIN
G D
IST
RIC
TS O
F
KA
RN
ATA
KA
ST
AT
E
Dis
tric
tsPe
riod
IPe
riod
IIPe
riod
III
(197
5-76
to 1
980-
81)
(198
1-82
to 2
009-
10)
(197
5-76
to
2009
-10)
Are
aP
rodu
ctio
nP
rodu
ctiv
ity
Are
aP
rodu
ctio
nP
rodu
ctiv
ity
Are
aP
rodu
ctio
nP
rodu
ctiv
ity
Tum
kur
CGR
0.81
0***
0.80
7***
-0.0
03**
4.52
3***
3.64
9***
-0.8
36**
*3.
936*
**3.
213*
**-0
.696
***
t st
at4.
879
4.89
0-2
.997
28.4
114
.673
-3.3
1024
.55
16.8
14-3
.985
P va
lue
0.00
80.
008
0.04
00.
000
0.00
00.
003
0.00
00.
000
0.00
0
Has
san
CGR
3.11
8 **
3.11
8 **
-0.0
001
NS
2.24
2***
1.59
8***
-0.6
30 *
*2.
337*
**1.
853*
**-0
.473
***
t st
at3.
417
3.41
7-1
.030
725
.97
7.07
1-2
.285
35.3
211
.277
-2.4
82
P va
lue
0.02
70.
027
0.36
090.
000
0.00
00.
030
0.00
00.
000
0.01
8
Chi
trad
urga
CGR
5.08
5 **
*5.
079
***
-0.0
05 *
*2.
176*
**1.
590*
**-0
.574
**
3.00
4***
2.56
6***
-0.4
26 *
*
t st
at3.
754
3.75
4-2
.816
11.5
84.
574
-2.0
5814
.23
8.30
4-2
.209
P va
lue
0.02
00.
020
0.04
80.
000
0.00
00.
049
0.00
00.
000
0.03
4
Chi
kmag
alur
CGR
1.74
7 **
1.74
8 **
0.00
07 N
S2.
205*
**2.
791*
**0.
573
NS
2.21
7*2.
668*
0.44
2 N
S
t st
at3.
590
3.58
80.
5975
19.6
24.
852
1.06
228
.48
6.78
61.
197
P va
lue
0.02
30.
023
0.58
230.
000
0.00
00.
297
0.00
00.
000
0.24
0
Dak
shin
aCG
R3.
864*
**3.
857*
**-0
.007
**
-0.7
05**
0.11
0 N
S0.
820*
**0.
125
NS
0.68
6**
0.56
0 **
*
Kan
nada
t st
at5.
013
5.01
4-2
.777
-1.9
700.
234
2.65
80.
419
2.00
62.
587
P va
lue
0.00
70.
007
0.05
00.
059
0.81
60.
013
0.67
80.
053
0.01
4
Kar
nata
ka s
tate
CGR
2.62
3***
2.90
4***
0.27
3 N
S3.
383*
**3.
159*
**-0
.216
NS
3.33
9***
3.13
3***
-0.2
00 N
S
t st
at5.
356
6.64
31.
084
54.0
611
.686
-0.7
1872
.87
16.9
56-0
.973
P va
lue
0.00
60.
003
0.33
90.
000
0.00
00.
479
0.00
00.
000
0.33
8
Not
e:
***,
**
and
* r
efer
s to
CG
R v
alue
s si
gnif
ican
t at
1 ,
5 an
d 10
per
cent
lev
el o
f si
gnif
ican
ce r
espe
ctiv
ely,
and
NS
ref
ers
to
insi
gnif
ican
t.
Sou
rce:
Cal
cula
ted
by s
econ
dary
dat
a
February, 2017 17
TABLE 2: INDEX OF INSTABILITY OF AREA, PRODUCTION AND PRODUCTIVITY OF COCONUT IN MAJOR COCONUT
GROWING DISTRICTS OF KARNATAKA STATE
Districts Period I Period II Period III(1975-76 to 1980-81) (1981-82 to 2009-10) (1975-76 to 2009-10)
Area Production Productivity Area Production Productivity Area Production Productivity
Tumkur 1.64 1.63 0.006 38.70 36.04 12.35 42.72 38.81 11.51
Hassan 6.791 6.791 0.0004 19.55 19.33 12.80 23.89 22.78 11.64
Chitradurga 10.87 10.85 0.012 18.50 20.56 12.58 28.34 29.02 11.42
Chikmagalur 3.742 3.744 0.004 19.46 48.86 30.15 23.10 50.30 27.88
Dakshina Kannada 7.773 7.759 0.015 17.40 21.70 19.65 18.29 22.65 18.09
Karnataka state 5.241 5.626 1.063 28.13 33.78 13.81 33.48 37.81 12.52
Source: Calculated by secondary data
TABLE 3: PERCENTAGE CONTRIBUTION OF AREA, PRODUCTIVITY AND THEIR INTERACTION TOWARDS INCREASING
PRODUCTION OF COCONUT IN MAJOR COCONUT GROWING DISTRICTS OF KARNATAKA STATE
(percent)
Districts Effect Period -I Period II Period III(1975-76 to 1980-81) (1981-82 to 2009-10) (1975-76 to 2009-10)
Tumkur ΔP 106* 6772* 6939*Area 100 95.12 95.22Yield -0.36 1.58 1.46Interaction -0.013 3.29 3.31
Hassan ΔP 237* 2573* 2812*Area 100.0 61.18 64.48Yield -0.0007 20.99 16.72Interaction -0.0001 17.83 18.79
Chitradurga ΔP 251* 1650* 2026*Area 100.1 69.94 75.56Yield -0.106 15.92 9.19Interaction -0.029 14.12 15.23
Chikmagalur ΔP 36* 1557* 1593*Area 100.01 27.95 29.58Yield -0.014 37.61 33.98Interaction -0.0012 34.42 36.43
Dakshina Kannada ΔP 111* 433* 562*Area 100.2 -3.22 20.27Yield -0.19 105.29 66.70Interaction -0.036 -2.07 13.03
Karnataka state ΔP 1233* 21388* 22897*Area 84.12 61.62 61.79Yield 13.99 15.75 13.42Interaction 1.89 22.62 24.78
Note: * -indicates that the absolute change in production
Source: Calculated by secondary data
18 Agricultural Situation in India
Seasonality and Exponential Smoothing Models for Price Forecasting of Rice in SelectedMarket of Uttar Pradesh
MEERA1 AND HEMANT SHARMA2
behaviour over time. More production and more arrivalsadversely affect the prices. As a result, the prices usuallygo down. But in a mixed economy like India, a certainamount of direction is given to the market forces and thislaw may not always holds good. This controlled mechanismof the market forces may aim at regulating market suppliesor consumption or both, particularly in the case ofcommodity in the short reaction among the sellers andbuyers and effect of these reactions at once reflected inthe supply and price position. Thus, in mixed economy, itwould be necessary to study the market arrivals and pricesand to know the factors influencing them. Based on thepast behaviour of market arrivals and prices, the futureprices can be predicted and forecasted to help thestakehoders. Rice is an important crop and consumedwidely across the globe as a staple food. India is amongthe leading rice producers in the world and stands at 2ndposition in the world. India produces rice in a large quantityand in the last financial year, rice production crossed themark of 100 Million Tonnes. Apart from the leading riceproducer, India is also the largest exporter of rice in theworld and in the last financial year, India exported morethan 8 Million Tonnes of rice to many countries. Some ofthe countries to which India exports rice are Iran, SaudiArabia, UAE, Senegal and South Africa. Rice is grownwidely across the nation in more than 20 states and in anarea of over 400 Lakh Hectares. West Bengal is the leaderamong all rice producing states with more than 13%contribution in India's Rice Production. Uttar Pradesh isanother leading rice producer in India and placed at 2ndposition among the largest rice producing states in India.Rice is consumed widely in Uttar Pradesh and grown in anarea of more than 59 Lakh hectares with 140.22 lakh tonproduction. The state also has a good yield of more than2,300 kilograms per hectare.Uttar Pradesh contributes morethan 13% in total rice production in the country. Some ofthe major rice growing areas are Shahjahanpur, Bareilly,Budaun, Aligarh, Saharanpur and Agra. Sarraiya, Manhar,Kalaboro, Saroj and Shusk Samrat are some of the varietiesof rice grown in the state. Farmers need price forecastingfor proper adjustments in cropping pattern and to decidewhen, where and how much to sell. Consumer need priceforecasting to understand market forces for makingpurchases in a rational manner. Researcher requires market
Abstract
Analysis of price and market arrivals overtime is importantfor formulating a sound agricultural policy. Fluctuationsin market arrivals largely contribute to price instability.Such an analysis is also useful for farmers in order todecide the suitable time to disposing off their farm produceto their best advantage. In view of this the present studywas undertaken by collecting monthly prices of rice inmajor rice markets of Uttar Pradesh for a period of 10years (2006 to 2015). Price of Rice was found to be highestduring off season and lowest during harvest season.Although rice is mainly kharif crop but also grown insummer season, the arrivals were high during Novemberto January. The higher seasonal indices of prices wereobserved during October during which the arrivals werefound to be low. In the investigation, different forecastingmodels were considered to price forecast and to measurethe forecast accuracy among selected models. Thecomparison of all the three Exponential Smoothing modelswas carried out in the process based on the MAD andMAPE values which were considered to be least. DoubleExponential model for rice were found to be the mostappropriate model with MAD (36.11) and MAPE (2.4). Thevalidity of the forecasted values of rice was checked bycomparing them with their actual production values duringthe post sample forecast period i.e. Jan.2016 to June 2016for rice crop. The accuracy percentage between theforecasted and actual price value of rice were found to liebetween 98.12 to 99.71 per cent. It was observed that theDouble Exponential model was between the most suitablefor forecasting the rice. This information could be usedfor further research in this area of production forecasting.
Keyword: Seasonality, Price Forecasting, Rice,Wholesale price. Double exponential model, Uttar Pradesh.
Introduction
The analysis of prices and market arrivals over time isimportant for formulating a sound agricultural price policy.Fluctuations in market arrivals largely contribute to theprice instability of foodgrains in the state. In order to deviceappropriate ways and means for reducing the pricefluctuations of foodgrains commodities, there is a need tohave a thorough understanding of the price
1M.Sc Agricultural Economics, Swami Keshwanand Rajasthan Agricultural University, Sri Ganganagar Rd, Bichhwal, Bikaner, Rajasthan3340062Assistant Professor, AERC, Vallabh Vidyanagar, Anand, Gujarat
February, 2017 19
intelligence in order to assess the efficiency of themarketing system, identify the bottlenecks in marketingprogramme/projects and for suggesting future remedialsteps and strategies. Under risk conditions and amidstprice instability, forecasting is very important in helpingto make decisions. Accurate price forecasts are particularlyimportant to facilitate efficient decision making as there istime lag between making decisions and the actual outputof the commodity in the market. Therefore, the objectivesof this research are i) to study the seasonality in arrivalsand prices of rice; and ii) to compare the forecastingperformances of different time series methods or modelsfor forecasting of rice price, namely Single, Double andTriple exponential smoothing.
Methodology
Shahjahanpur region was purposively selected for the pricebehaviour study as around 20 per cent rice of UP isproduced in this region. Shahjahanpur market had highestarrivals of rice. The data on market arrivals and wholesaleprices of rice crop was collected from Agmark portal Theprice behaviour of the rice in selected market over theperiod from Jan., 2006 to December 2015 was analysed.The various price forecasting models were tried to identifythe most suitable model which suits to the actual marketprice of rice. The data of rice wholesale prices inShahjahanpur regulated market for the period Jan. 2006 toDecember, 2015 was utilized for model fitting and data forsubsequent period i.e., from Jan. 2016 to June, 2016 wasused for validation. The details are as follows:
Seasonal Behaviour
(a) Computation of seasonal indices:
The seasonal price indices were computed by taking 12months moving average of the original data with thefollowing multiplicative model of time series analysis:
P = T × S × C × I .......................... (1)
Where,
P = Monthly price
T = Trend value
C = Cyclic component
S = Seasonal component
I = Irregular component
The ratio to moving average method was used forthe construction of the seasonal price indices. The effectof trend and cyclical variations were eliminated by twelvemonths centered moving averages. Thereafter, the ratiosof original price indices to centered twelve months movingaverages were worked out. These ratios were averagedand the twelve months indices were equal to 1200.
Price Forecasting
(A) Exponential Smoothing Model:
For smoothing, the common techniques discussed byGardner (1985) i.e. Single Exponential Smoothing (SES)and Double Exponential Smoothing (DES), are used.
(i) Single exponential smoothing (SES)
For the time series Y1, Y2........., Yt, forecast for thenext value, say Yt + 1, Ft + 1, is based on the weights α and(1–α ) to the most recent observation Y1 and recent forecastF1 respectively, where is a smoothing constant, the formof the model is :
Ft+1 = F1 + (Y1 – F1)
The choice of has considerable impact on theforecast. The optimum value of corresponding to minimumMean Square Error (MSE) is then identified.
(ii) Double Exponential Smoothing (DES)
The form of the model is
Lt = α Yt + (1– α) (Lt–1 + bt–1)
bt = β(Lt – Lt–1) + (1– β)bt–1
Ft+m = Lt + btm
Where, Lt is level of series at time t
bt is slope of the series at time t
α and β (= 0.1.0.2,..........0.9) are the smoothing andtrend parameters
The pair of values of parameters, α and β, whichgives minimum MSE are taken.
Selection of weights (W1, W2, W3)
Values of all three smoothing constant/weights areobtained by trial and error method. The time series areanalyzed by giving different weights and the bestexponential model in each case is selected, based on theminimum MAPE and MSD values under different weights.
Criteria Measurement for Forecast Error:
To measure the forecast error or accuracy of the forecast,following measures have been used.
(i) Mean Square Error (MSE):— This is similar to simplevariance.
Where At = Actual value at time t
Ft = forecast value at time t
20 Agricultural Situation in India
(ii) Mean Absolute Deviation (MAD):— This is averageof absolute deviation or absolute forecast error.
(iii) Mean Absolute Percent Error (MAPE):- This is averagevalue of percent absolute error.
Results and Discussion
The seasonal indices of arrivals and prices of rice inShahjahanpur regulated market for the period from 2006 to2015 are shown in Table 1 and Fig.1. The highest index ofarrivals was observed in the month of November (189.92).The lower indices of arrivals were more prominent fromFebruary to June with a lowest in April (56.89). The indicesof arrivals were more than 100 from November to Januaryindicating the peak arrival months of rice in theShahjahanpur market. Thus, the arrivals of rice showed adefinite pattern, depicting fluctuation in systematic manner.
The price index of rice was found to be the highestin the month of October (101.86) and the lowest in February
(98.81) at Shahjahanpur market. The price indices of ricewere more than 100 from February to April showed adefinite pattern of seasonality in price according to cropseason. It can, thus, be concluded that the arrivals of ricehas negative relation with the price.
TABLE 1: SEASONAL INDICES OF MONTHLY ARRIVALS
AND PRICES OF RICE IN SHAHJAHANPUR
REGULATED MARKET
(2006 TO 2015)
S. No. Month Arrivals Price
1. January 153.04 99.14
2. February 86.55 101.35
3. March 62.32 101.78
4. April 56.89 101.34
5. May 58.30 98.81
6. June 64.77 98.99
7. July 94.86 99.47
8. August 95.69 99.51
9. September 90.31 99.89
10. October 85.66 101.86
11. November 189.92 99.48
12. December 166.69 98.38
Total 1200.00 1200.00
Figure 1: Seasonal indices of monthly arrivals and prices of Rice in Shahjahanpur market (2006 to 2015)
Table 2 shows the monthly wholesale price of Ricefor the period 2006 to 2015 and the data revealed anincreasing trend. For smoothing of the data, Double
exponential smoothing technique was found to be mostappropriate.
February, 2017 21
TABLE 2: ACCURACY AND FORECAST PRICE OF RICE BY DIFFERENT MODELS
(Rs./quintal)
Month & Actual Forecast Price of Rice (Rs./ Qtl.)Year Wholesale Single Exponential Double Exponential Triple Exponential
price Model model Model
Jan.16 2185.81 2070.2 2203.65 2100.59(94.42) (99.19) (95.94)
Feb.16 2196.82 2070.2 2214.2 2113.87(93.88) (99.22) (96.08)
Mar.16 2172.28 2070.2 2224.75 2132.75(95.07) (97.64) (98.15)
Apr.16 2241.85 2070.2 2235.31 2136.15(91.71) (99.71) (95.05)
May16 2288.08 2070.2 2245.86 2146.12(89.48) (98.12) (93.39)
June16 2295.46 2070.2 2256.41 2159.44(89.12) (98.27) (95.51)
Figure in parentheses are the percentages of respective actual prices
The performance of different models was measuredin terms of Mean Absolute Deviation (MAD) and MeanAbsolute Percentage Error (MAPE). The comparativeperformances of different models are presented in Table 2.
TABLE 3: DIFFERENT EXPONENTIAL SMOOTHING
CRITERION FOR RICE PRICE FORECAST MODEL
Model SES DES TES
MAPE 2.66 2.4 3.29
MAD 41.52 36.11 52.03
MSD 6112.48 6088.44 6157.97
From the Table 3, it can be inferred that the doubleexponential model was the preferred model for forecastingwholesale price of rice due to the minimum values of MAD(36.11) and MAPE (2.4) when compared to the othermodels. The actual wholesale price of rice from Jan.2016to June 2016 and the predicted values for these monthsthrough various models are presented in Table 2. In orderto check the validity of these forecasted values, they werecompared with the actual values of rice price during thepost sample forecast period i.e., from Jan.2016 to June2016. The accuracy percentages vary from 98.12 per centto 99.71 per cent based on double exponential model. Itwas observed that the accuracy percentage out of differentforecasting models, the prevailing price and based ondouble exponential model was very close to actual valueas compared to other predicted model prices. The accuracypercentage varied from 89.12 to 95.07 per cent in case of
SES model and 93.39 to 95.94 per cent in case of TES. Thisproved that the Double exponential model was the best fitmodel for forecasting the rice price in Shahjahanpurregulated market during the period under study.
Conclusion
The analysis of price and market arrivals of rice cropovertime is important for formulating a sound agriculturalpolicy. Price of rice was found to be highest during offseason and lowest during harvest season. Since rice ismainly kharif crop but also grown in summer season, thearrivals were high during November to January. The higherseasonal indices of prices were observed during Octoberduring which the arrivals were found to be low. In theinvestigation, different forecasting models wereconsidered to price forecast and to measure the forecastaccuracy among selected models. The comparison of allthe three Exponential Smoothing models was carried outin the process based on the MAD and MAPE values whichwere considered to be least. Double Exponential model forrice were found to be the most appropriate model withMAD (36.11) and MAPE (2.4). The validity of theforecasted values of rice was checked by comparing themwith their actual production values during the post sampleforecast period i.e. Jan.2016 to June 2016 for rice crop. Theaccuracy percentage between the forecasted and actualprice value of rice were found to lie between 98.12 to 99.71per cent. It was observed that the Double Exponentialmodel was the most suitable for forecasting the rice. Thisinformation can be used for further research in this area ofproduction forecasting.
22 Agricultural Situation in India
Policy Implications
� Adequate and continuous efforts should be madeto disseminate the market intelligence and marketinformation, particularly of price forecast to helpthe stake holders.
� There is a need to establish a few processingunits to create value addition to the selectedcommodities. These would help the farmers toget better income on the one hand and reduceprice fluctuation on the other hand.
References
Gardner, E.S. (1985). Exponential Smoothing - The state ofthe art. J. Forecasting.4, 1-28.
Makridakis, S., Wheelwright, S.C. and Hyndman, R.J.(1998). Forecasting- Methods and Applications JohnWiley and Sons, NewYork.
Karim, M. R. Awal, M. A. and Akter, M. (2010) Forecastingof wheat production in Bangladesh. BangladeshJournal of Agricultural Research. 2010. (35), 17-28.
Lalang B., A. M. Razali and I-L J. Zoinodin (1997),Performance of some forecasting techniques appliedon Palm Oil Price Data, Prosiding Institute StastistikMalaysia , 82 -92.
Mad Nasir, S., Mat Lani, R. and Chew, T. A. (1992). Aneconometric analysis of cocoa prices: A structuralapproach. journal ekonomi malaysia, 25(2): 3-17.
Martin, R. V. Washington, R. and Downing, T. E. (2000)Seasonal maize forecasting for South Africa andZimbabwe derived from an agroclimatological model.Journal of Applied Meteorology. (39), 1473-1479.
Masoood, M. A. Javed, and M. A. (2004) Forecast modelsfor sugarcane in Pakistan. Pakistan Journal ofAgricultural Science. (41:1/2), 80-85.
Najeeb Iqbal, Khuda Bakhsh, Asif Maqbool and Ahmad,A. S., (2005) Use of the ARIMA model for forecastingwheat area and production in Pakistan. Journal ofAgriculture and Social Sciences, (12), 120-122.
February, 2017 23
Cotton Acreage Response to Price in Tamil Nadu - A Functional Analysis
DR. R. MEENAKSHI*
3. Which of the following price specifications couldbe said to be more relevant to the farmers'expectations behaviour with respect to theirresource allocation?
a) Twelve - month annual average price inprevious year (p1).
b) Three - month post-harvest average pricein previous year (p2).
c) Three - month pre-sowing average price incurrent year (p3).
d) Average of previous year's post-harvestand current year's pre-sowing prices (p4)
e) Three - year average of twelve - monthannual average price (p5).
f) Three - year average of three - month post-harvest average price (P6 ).
g) Three - year average of three - month pre-sowing average price (p7).
h) Three-year average of three - month post-harvest and three month pre-sowingaverage prices (p8).
4. What are the magnitudes of long run and shortrun elasticities with respect to relative pricechanges, yield, rainfall and substitute cropacreage?
5. What is the period taken by farmers to fully adjustto acreage to a change in its price?
Multiple regression analysis is used throughNerlove's adjustment lag model and traditional model totest the hypothesis that acreage responds to price andnon-price movements positively. The study covers prereform period and post reform period for which continuoustime series data has been made available from the variouspublications of Government of Tamil Nadu.
The estimating model included prices, laggedacreage, yield, rainfall, time trend and substitute cropacreage as independent variables with acreage consideredas a dependent variable.The effect of the above sixindependent variables on cotton acreage in Tamil Nadu
Introduction
Econometric model to study acreage response is of greatimportance in agricultural planning, more so, when itinvolves manipulation of price structure. Acreage responseto price is conditioned by several factors like soil type,rainfall, irrigation, technical constraints such as croprotational requirements etc., which affect acreage allocationamong crops. These factors differ considerably from regionto region. Therefore, acreage response is also expected tovary among regions. This fact has prompted to examinethe acreage response to relative prices of cotton in TamilNadu state for the pre reform and post reform periods.
Cotton, as a commercial crop, plays an importantrole in transforming subsistence agriculture into a profitoriented business. India has the distinct pride of havingthe largest cotton growing area, namely, one-fourth of theWorld's cotton area and the largest producer of extra-longstaple cotton. Cotton is one of the important cash cropsgrown in many states over an area of about 9.14 millionhectares in India. Among the states of Tamil Nadu, Gujarat,Punjab and Andhra Pradesh cotton registered the highestyield in India. Recently, cotton is cultivated in an area of1.29 lakh hectares of land and producing about 5 lakhbales (170 Kgs / bale) in Tamil Nadu. The state registereda productivity growth of 388 Kg / hectare in 2015-16. Inview of predominant position occupied by cotton, the cashcrop in Tamil Nadu, the response of acreage to pricevariation becomes significant.
The study endeavours to evaluate supply responsefor farm sector in case of cotton and the evidence examinedcovers a period of 44 years (1971-72 to 2014 -15) in thestate of Tamil Nadu. For the time series analysis, the periodof study is (1971-72 to 2014-15) divided into two periods,viz. pre-reform period pertaining to 1971-72 to 1989-90;post-reform period covering 1990-91 to 2014-15.
Methodology and Analysis
The study attempts to answer the following questions.
1. What are the suitable models to describe acreageresponse?
2. Whether the Nerlovian adjustment lag modelproves to be better than the traditional model?
*Retired Head & Associate Professor, Department of Economics,
Sri Sarada College for Women, Salem
24 Agricultural Situation in India
has been examined because it is not only the price but thequantum of other variables which are important for acreageallocation of cotton.
The results and interpretations of the functionalanalysis are based on two models, the adjustment lag modeland the traditional model to obtain the response relation.Non-linear (logarithmic) regression equations have beenfitted to the absolute values of the variables. Thelogarithmic functions gave consistently better fit andtherefore, for the study area, they were selected fordiscussion in this paper.
For the study of Tamil Nadu, a set of sixteenequations are presented. The first eight equations relateto the adjustment lag model using the first four pricespecifications with and without a trend value. Theremaining eight are the equations based on the traditionalmodel. In the traditional model with no recognition to pastacreage, the first four prices are the same as used in theadjustment lag equations and the last four involve three-year average price specifications. On the basis of thesesixteen functions, the best price expectation has beenchosen for subsequent discussion.
Results and Discussion
As a preliminary analysis, simple zero order and firstorder partial correlations were worked out for Tamil Nadustate for the variables used in this study and are givenbelow. In pre reform period, the correlation between areaand lagged area were positive in the entire study area.This association reveals that a substantial portion ofacreage allocation in cotton flows from past behaviour. It
is equally surprising that a negative correlation was foundbetween area and trend in the study region. Therelationship between area and variables like rainfall,substitute crop acreage and time trend was not positivein Tamil Nadu state. However, the relationship betweenarea and yield was found to be positive in the study region.
In the post reform period, there was positiveassociation between area and lagged area, area and yield,and area and trend value in the entire study region. Cottonacreage and rainfall emerged with a negative sign for thestate as a whole. The relationship of area with substitutecrop acreage had a mixture of positive and negative signs.
It may be mentioned that no definite indication couldbe obtained from the zero order correlations worked outfor the acreage and non-price variables as the associationbetween them in the state came to be neither uniform norpowerful, not significant enough to suggest any definitechoice.
The assessment of the extent and direction ofassociation between the relative prices was attempted withthe help of simple correlation coefficients. P1 price showeda significant association with P3 price in Tamil Nadu statein pre and post reform periods. All values are positivelycorrelated in the study area. Out of the eight price variables,P3 emerges significantly correlated with remaining pricevariables in Tamil Nadu state as a whole.
Regressions were run for Tamil Nadu state. Theestimated acreage response function based on theselection of price for this state is given below.
TABLE 1: ESTIMATION OF ZERO-ORDER AND FIRST-ORDER CORRELATIONS IN PRE-REFORM PERIOD
At A t_1 Yt_1 Wt Tt St
At 1.000 .482(*) .011 –.017 –.310 –.172
At_1
1.000 .069 –.341 –.497(*) –.262
Yt_1
1.000 –.107 .495(*) –.204
Wt 1.000 .269 .274
Tt 1.000 –.352
St 1.000
** Correlation is significant at 0.01 level.* Correlation is significant at 0.05 level.
February, 2017 25
TABLE 2: ESTIMATION OF ZERO-ORDER AND FIRST-ORDER CORRELATIONS IN POST-REFORM PERIOD
A t At_1 Yt_1 Wt Tt St
At 1.000 .916(**) .076 –.040 .915(**) .750(**)
At_1
1.000 .063 –.050 .885(**) .719(**)
Yt_1 1.000 .006 –.017 –.134
Wt 1.000 –.120 –.017
Tt 1.000 .912(**)
St 1.000
** Correlation is significant at 0.01 level.* Correlation is significant at 0.05 level.
TABLE 3 ESTIMATION OF SIMPLE PRICE CORRELATION COEFFICIENTS IN PRE-REFORM PERIOD
P1 P2 P3 P4 P5 P6 P7 P8
P1 1.000 .987(**) .758(**) .931(**) .847(**) .843(**) .814(**) .829(**)
P2 1.000 .740(**) .928(**) .816(**) .814(**) .782(**) .798(**)
P3 1.000 .938(**) .965(**) .963(**) .963(**) .964(**)
P4 1.000 .978(**) .976(**) .960(**) .969(**)
P5 1.000 .998(**) .993(**) .996(**)
P6 1.000 .995(**) .999(**)
P7 1.000 .999(**)
P8 1.000
** Correlation is significant at 0.01 level.* Correlation is significant at 0.05 level.
TABLE 4: ESTIMATION OF SIMPLE PRICE CORRELATION COEFFICIENTS IN POST-REFORM PERIOD
P1 P2 P3 P4 P5 P6 P7 P8
P1 1.000 .931(**) .625(**) .850(**) .914(**) .901(**) .824(**) .907(**)
P2 1.000 .719(**) .937(**) .906(**) .964(**) .835(**) .942(**)
P3 1.000 .917(**) .769(**) .719(**) .791(**) .789(**)
P4 1.000 .914(**) .923(**) .885(**) .946(**)
P5 1.000 .951(**) .865(**) .956(**)
P6 1.000 .823(**) .956(**)
P7 1.000 .952(**)
P8 1.000
** Correlation is significant at 0.01 level.* Correlation is significant at 0.05 level.
26 Agricultural Situation in India
TABLE 5: ESTIMATED ACREAGE RESPONSE FUNCTIONS WITH DIFFERENT PRICE EXPECTATIONS USED FOR COTTON
LINT PRICES IN TAMIL NADU IN PRE-REFORM PERIOD- LOGARITHMIC
Equation Price Constant Pt_1 At_1 Yt_1 Wt Tt St R2 Adj. R2
No. Expectationused
1.01 P1 59.761 0.370 -0.501 0.707** 0.501* -6.835** -1.604** 0.474 0.159(0.328) (0.444) (0.331) (0.346) (3.232) (0.73)
1.02 P2 49.485 0.179 -0.342 0.659* 0.497* -5.269** -1.367** 0.432 0.092(0.271) (0.426) (0.341) (0.359) (2.909) (0.715)
1.03 P3 39.444 0.271 -0.14 0.53* 0.323 -4.811*** -0.864* 0.487 0.207(0.254) (0.35) (0.307) (0.322) (2.016) (0.585)
1.04 P4 53.169 0.527 -0.317 0.6** 0.325 -7.028*** -1.174* 0.488 0.18(0.421) (0.362) (0.314) (0.371) (3.127) (0.597)
1.05 P1 12.290 -0.214 0.255 0.28 0.294 - -0.377 0.239 -0.106(0.203) (0.301) (0.301) (0.38) (0.508)
1.06 P2 12.268 -0.205 0.25 0.268 0.296 - -0.372 0.246 -0.097(0.185) (0.3) (0.291) (0.376) (0.502)
1.07 P3 13.349 -0.12 0.255 0.193 0.24 - -0.441 0.221 -0.103(0.23) (0.364) (0.322) (0.377) (0.658)
1.08 P4 16.023 -0.264 0.159 0.322 0.367 - -0.593 0.229 -0.122(0.271) (0.344) (0.338) (0.433) (0.629)
1.09 P1 35.999 0.148 - 0.478** 0.455 -3.892** -1.01** 0.407 0.138(0.266) (0.266) (0.348) (1.938) (0.513)
1.10 P2 34.188 0.07023 - 0.492** 0.463 -3.477** -0.977** 0.396 0.121(0.231) (0.266) (0.351) (1.835) (0.515)
1.11 P3 34.586 0.288 - 0.456** 0.295 -4.431*** -0.718* 0.48 0.263(0.242) (0.237) (0.303) (1.713) (0.441)
1.12 P4 39.916 0.432 - 0.447* 0.312 -5.425** -0.876** 0.448 0.198(0.403) (0.258) (0.367) (2.508) (0.485)
1.13 P5 44.104 0.82** - 0.48** 0.21 -7.466**** -0.703* 0.566 0.369(0.389) (0.225) (0.321) (2.348) (0.442)
1.14 P6 45.471 0.781 ** - 0.526*** 0.318 -7.603*** -0.813** 0.533 0.321(0.426) (0.234) (0.319) (2.716) (0.448)
1.15 P7 46.706 0.885* - 0.565*** 0.21 -8.307*** -0.698* 0.52 0.302(0.514) (0.24) (0.347) (3.244) (0.471)
1.16 P8 46.213 0.839** - 0.545*** 0.264 -7.993*** -0.756* 0.528 0.314(0.469) (0.236) (0.33) (2.97) (0.457)
* - Significant at 20% level ** - Significant at 10% level *** - Significant at 5% level **** - Significant at 1% levelFigures in the Parenthesis are standard errors
P1 - Twelve - month annual average price in previous year. P2 - Three - month post-harvest average price in previous year.
P3 - Three - month pre sowing average price in current year.
P4 - Average of previous years post-harvest and current year pre sowing prices.
P5 - Three - year average of twelve - month annual average price.
P6 - Three - year average of three - month post-harvest average price.
P7 - Three - year average of three - month pre sowing average price.
P8 - Three - year average of three - month post-harvest and three-month pre sowing average price
February, 2017 27
TABLE 6: FINALLY, ESTIMATED COTTON ACREAGE RESPONSE FUNCTIONS - TAMIL NADU IN PRE-REFORM PERIOD
Equation Price Regression Coefficients Coefficient of AdjustedNo. Expectation Constant Relative Cotton Yield Rainfall T t Substitute Multiple Coefficient
Selected Price Pt-1 Acreage Yt-1 W t Crop St Determination of Multiplein At-1 on R2 Deter-
minationR—2
1.03 P 3 39.444 0.271 -0.14 0.53* 0.323 -4.811 *** -0.864 * 0.487 0.207(0.254) (0.35) (0.307) (0.322) (2.016) (0.585)
1.04 P 4 53.169 0.527 -0.317 0.6** 0.325 -7.028*** -1.174* 0.488 0.18(0.421) (0.362) (0.314) (0.371) (3.127) (0.597)
1.11 P 3 34.586 0.288 - 0.456** 0.295 -4.431*** -0.718* 0.48 0.263
(0.242) (0.237) (0.303) (1.713) (0.441)
* -Significant at 20% level ** - Significant at 10% level *** -Significant at 5% level ****-Significant at 1% levelFigures in the Parentheses are standard errors.
TABLE 7: ACREAGE ELASTICITIES AND COEFFICIENT OF ADJUSTMENT FOR COTTON LINT PRICES INTAMIL NADU IN PRE-REFORM PERIOD
Equation Elasticity with Elasticity Elasticity Elasticity α β Coefficient of YearsNo respect to prices with with with adjustment required
Short run Long runs respect respect respect (γ) for 95elasticity elasticity to yield to to percent
weather substitue effect ofcrop price
1.07 -0.069 -0.093 -0.071 -0.088 -0.174 17.92 0.1611 0.7450 2.192
1.11 0.166 0.166 0.158 0.100 0.312 34.59 0.2880 - -
TABLE 8: ESTIMATED ACREAGE RESPONSE FUNCTIONS WITH DIFFERENT PRICE EXPECTATIONS USED FOR COTTON
LINT PRICES IN TAMIL NADU IN POST-REFORM PERIOD-LOGARITHMIC
Equation Price Constant P t_1 At_1 Yt_1 W t T t St R2 Adj. R2
No. Expectationused
2.01 P 1 36.632 0.0386 -0.702 -0.141 0.781** 3.134** -2.681 0.869 0.803(0.291) (0.646) (0.36) (0.393) (1.479) (1.657)
2.02 P 2 36.744 0.106 -0.761 -0.118 0.8** 3.269** -2.745 0.87 0.806(0.27) (0.66) (0.361) (0.394) (1.515) (1.646)
2.03 P 3 47.703 0.661*** -1.444*** -0.307 0.963*** 4.67**** -3.798*** 0.918 0.877(0.247) (0.577) (0.285) (0.319) (1.301) (1.37)
2.04 P 4 40.040 0.458* -1.11* -0.131 0.889*** 4.003*** -3.195** 0.888 0.832(0.317) (0.656) (0.326) (0.371) (1.49) (1.563)
2.05 P 1 -6.820 -0.03516 0.629**** 0.302 0.13 - 0.701* 0.82 0.751(0.326) (0.171) (0.33) (0.276) (0.503)
2.06 P 2 -6.345 -0.04975 0.627**** 0.288 0.132 - 0.68* 0.82 0.751(0.295) (0.166) (0.348) (0.276) (0.492)
2.07 P 3 -12.373 0.264 0.584**** 0.345 0.06501 - 0.992*** 0.829 0.764(0.306) (0.166) (0.305) (0.274) (0.434)
2.08 P 4 -9.917 0.106 0.613**** 0.35 0.106 - 0.855* 0.821 0.752(0.351) (0.168) (0.331) (0.279) (0.501)
2.09 P 1 15.749 -0.01832 - 0.04794 0.462* 1.572**** -1.068* 0.856 0.801(0.289) (0.882) (0.264) (0.35) (0.742)
2.10 P 2 14.826 0.01655 - 0.06328 0.456* 1.565**** -1.02* 0.856 0.801(0.262) (0.329) (0.261) (0.34) (0.696)
28 Agricultural Situation in India
2.11 P 3 7.881 0.359* - 0.09253 0.363* 1.49**** -0.645 0.875 0.827(0.255) (0.28) (0.249) (0.321) (0.636)
2.12 P 4 10.182 0.219 - 0.125 0.414* 1.538**** -0.79 0.862 0.808(0.303) (0.309) (0.259) (0.335) (0.694)
2.13 P 5 4.781 0.543 - 0.184 0.361* 1.501**** -0.57 0.872 0.823(0.419) (0.299) (0.254) (0.324) (0.682)
2.14 P 6 8.511 0.321 - 0.18 0.429* 1.558**** -0.768 0.863 0.81(0.394) (0.33) (0.253) (0.331) (0.685)
2.15 P 7 9.443 0.364 - 0.02451 0.414* 1.585**** -0.799 0.865 0.813(0.387) (0.291) (0.253) (0.329) (0.646)
2.16 P 8 8.065 0.385 - 0.124 0.414* 1.569**** -0.746 0.865 0.813(0.419) (0.3) (0.254) (0.329) (0.675)
* - Significant at 20% level ** - Significant at 10% level *** - Significant at 5% level **** - Significant at 1% level
Figures in the Parenthesis are standard errors
P1 – Twelve - month annual average price in previous year.
P2 – Three - month post-harvest average price in previous year.
P3 – Three - month pre sowing average price in current year.
P4 – Average of previous years'post-harvest and current year pre sowing prices.
P5 – Three - year average of twelve - month annual average price.
P6 – Three - year average of three - month post-harvest average price.
P7 – Three - year average of three - month pre sowing average price.
P8 – Three - year average of three - month post-harvest and three-month pre-sowing average price
TABLE 9: FINALLY, ESTIMATED COTTON ACREAGE RESPONSE FUNCTIONS-TAMIL NADU IN POST REFORM PERIOD
Regression Coefficients Coefficient AdjustedEquation Price Constant Relative Cotton Yield Rainfall T t Substitute of CoefficientNo. Expectation Price Pt-1 Acreage Yt-1 W t Crop St Multiple of Multiple
Selected in At-1 Determination DeterminationR—2
2.03 P 3 47.703 0.661*** -1.444*** -0.307 0.963*** 4.67**** -3.798*** 0.918 0.877(0.247) (0.577) (0.285) (0.319) (1.301) (1.37)
2.04 P 4 40.040 0.458* -1.11* -0.131 0.889*** 4.003*** -3.195** 0.888 0.832(0.317) (0.656) (0.326) (0.371) (1.49) (1.563)
2.11 P 3 7.881 0.359* - 0.09253 0.363* 1.49**** -0.645 0.875 0.827
(0.255) (0.28) (0.249) (0.321) (0.636)
* - Significant at 20% level ** - Significant at 10% level *** - Significant at 5% level **** - Significant at 1% level
Figures in the Parenthesis are standard errors
TABLE 10: ACREAGE ELASTICITIES AND COEFFICIENT OF ADJUSTMENT FOR COTTON LINT PRICES IN TAMIL NADU
IN POST-REFORM PERIOD
Equation Elasticity with respect Elasticity Elasticity Elasticity Coefficient of Years required No.to prices with respect with respect with respect α β adjustment for 95 percent
Short run Long run to yield to weather to substitute (γ) effect of priceelasticity elasticity crop
2.07 0.189 0.454 0.297 0.362 0.677 29.74 0.6346 0.4160 5.570
2.11 0.257 0.257 0.168 0.205 0.383 7.88 0.3590 - -
Estimation of Cotton Acreage Response in Tamil Nadu state
Equation Price Constant Pt_1 At_1 Yt_1 Wt Tt St R2 Adj. R2
No. Expectationused
TABLE 8: ESTIMATED ACREAGE RESPONSE FUNCTIONS WITH DIFFERENT PRICE EXPECTATIONS USED FOR COTTON
LINT PRICES IN TAMIL NADU IN POST-REFORM PERIOD-LOGARITHMIC—CONTD.
nR2
February, 2017 29
Pre Reform Period
Table 5 gives the regressions relating acreage and othervariables with alternative price specifications. Equations1.01 to 1.04 reveal that coefficient of relative price ispositively significant in all equations. Added to this, pastyield, rainfall have also turned out to be positive for theseequations. The inclusion of past acreage, yield, trend andsubstitute crop acreage emerge negatively significant.R2value is high for both P3 and P4 prices. With theexception of Pt_1 and St, all other variables are positivelysignificant from equations 1.05 to 1.08. In the traditionalmodel, Tt and St are found to be negatively significant.P5 price specification has the highest adjusted R2
value (Table 5).
Table 6 shows acreage elasticities and coefficient ofadjustment of cotton lint prices during Tamil Nadu in pre-reform period. The short run and long run elasticities withrespect to price are low but positive. For the entire state, ittakes nearly 2 years for full adjustment when P3 price istaken into account (Table 7).
Post Reform Period
In the post reform period (Table Nos. from 8 to 10), P3
price gave the best results Pt_1, Wt and Tt are found to bepositive with different levels of significance. The shortrun and long run elasticity with respect to price are notsignificant. The coefficient of adjustment was very lowand the state takes 6 years for full adjustment in the recenttime period.
Conclusion
The main finding that could emerge from this study is thatthe acreage responds positively to price changes and it isvery much influenced by non-price factors. The eight pricespecifications seldom give identical results with respectto farmer's acreage decisions. The results of the regressionindicate that P3 price is the most relevant price at the statelevel in explaining farmer's decisions.
In the state as a whole, though the farmers take 2 to6 years to fully adjust the acreage to change in its price, itis quite clear from the study that price behaviour is at besta decisive factor for area allocation for cotton in TamilNadu state in conjunction with factors like rainfall, pricesof the competing crops, yield and past acreage. Themagnitude of γ varies from one price to another pricevariable. Higher value of γ indicates that large number ofpast prices are considered in acreage allocation decision.The high value of coefficient of adjustment indicates lesserrigidity in adjustment of output. The study broadlyendorses the conclusion that the adjustment lag modelyields better results when compared with traditional modelas it yields good values for the variables considered forthe present study. It is concluded that the importance ofprice is unquestionable from the view point of stability orthe increase in cotton acreage. Price then plays animportant role in acreage allocation decisions of thefarmers.
References
1) Dharm Narain:The Impact of Price Movementson Areas under Selected Crops in India 1900 -1939. Cambridge University Press, London, 1965.
2) Acharya S.S. and Satish Bhatia: AcreageResponse to Price, Yield and Rainfall Changes inRajesthan, Agricultural Situation in India, July1974, pp. 209 - 215.
3) Meenakshi. R: Inter-Zone Analysis of CottonProduction in Tamil Nadu State, AgriculturalSituation in India, Vol. LXIX, April 2012, pp. 5.
4) Misra, V.N. Acreage Response in Gujarat: An InterDistrict Analysis, Anvesak, Vol. III, No. 1, June -December 1973, pp. 103 - 136.
5) Walsh, R.M.: Response to Price in Production ofCotton and Cotton - Seed, Journal of FarmEconomics, Vol. 26, 1944, pp.359 - 372.
30 Agricultural Situation in India
AGRO-ECONOMIC RESEARCH
Impact of National Food Security Mission (NFSM) on Input use, Production, Productivity andIncome in Tamil Nadu*
K. JOTHI SIVAGNANANAM
1.1 Background of the Study
Agricultural sector plays a very vital role in the differentdimensions of social, political and economic developmentof our nation. It is enormously important for the Indianeconomy as the sector is contributing 13.9 of the GDP andabout 55 percent of the total employment share (Census,2011). About half of the population still depends onagriculture as its primary source of income, while itprovides raw material for a large number of industries(Government of India, 2012-13). The experience of the lastthree decades indicates that the growth rate of foodgrainproduction decreased from 2.93 percent during the period1986-97 to 0.93 percent during 1996-2008. The declininggrowth of foodgrains production was partly contributedby the decline in area but largely by the decline in yieldrate. The yield growth rate of foodgrains decreased from3.21 percent to 1.04 percent during the same time period.There was also decline in growth in the production ofother agricultural commodities. This is clearly reflected inthe decelerated agriculture growth from 3.5 percent duringthe period 1981-82 to 1996-97 to around 2 percent during1997-98 to 2004-05. Neverthless, there have been signs toimprovement during the recent years (Dev and Sharma,2010; Kumar 2013 and Government of India, 2012-13). TheU-turn in agricultural production occurred mainly due tothe implementation of important programs, such asRastriya Krishi Vikas Yojana (RKVY), National FoodSecurity Mission (NFSM), National Horticultural Mission(NHM), various sub-schemes and substantial increase inthe state agricultural outlay on agriculture (Governmentof India, 2012-13, Kumar 2013).
The percentage share of the poor in India declinedfrom 25.5 percent to 17.0 percent. It is noted that the lowincome countries have the higher prevalence of povertythan the developed and developing countries. A majorityof the people, who are undernourished, are located in theSourthern Asia followed by Sub-Saharan Africa andEastern Asia. The countries's share has declined inEastern Asia and South-Eastern Asia ( FAO, 2014).
1.2 Objectives of the Research Study
Given the above broad objectives, the study intends toachieve the following specific objectivies listed below:
* To analyze the trends in area, production,
productivity of rice, and pulses in the NFSMand non-NFSM districts in Tamil Nadu.
* To analyze the socio-economic profile of NFSMbeneficiaries vis-a-vis Non-NFSM beneficiaryfarmers of rice in the study area;
* To assess the impact of NFSM on input use,production and income among the beneficiaryfarmers in the study area;
* To identify factors influencing the adoption ofmajor interventions (im-proved technologies)under NFSM scheme; and
* To identify the constrains hindering theperformance of programme
1.3 Research Methodology
The study is based on primary and secondary sources inTamil Nadu. The secondary data obtained from Governmentof Tamil Nadu publications relating to area, productionand productivity of rice and pulses was used. The list ofthe benefits obtained by the households for the whole ofthe 11th PLan (2007-08 to 2011-12) and two years of the12th Plan (2012-13 and 2013-14) was prepared. Theselection of households was done based on the crondevelopment programme under which benefits pertain toonly one year. Seeds, fertilizers, pesticides were distributedduring 2013-14 year, but machinery and equipment wasdistributed from 2007-08 to 2012-13.
Primary data has been collected from two districtsnamely Thiruvarur and Sivagangai of Tamil Nadu. In eachof the districts of Thiruvarur and Sivagangai, tworepresentative blocks, namely, Mannarkudi, Valangaiman,Kalayairkovil and Sivagangai are taken respectively andwithin each block two villages are selected. In each district,150 beneficiaries from the list of NFSM rice growingcultivators are drawn at random from household farmerswith different land sizes on the basis of their proportionin the universe. In addition to the above sample, 50 non-beneficiaries from rice growers have been selectedrandomly from households with different land sizes. Thus,altogether,300 beneficiaries from are NFSM rice growingcultivators and 100 are non-benefciaries.
Study analyses the socio-economic profile of NFSM
*A.E.R.C., University of Madras, Channai-6000005
February, 2017 31
and Non-NFSM beneficiary farmers of paddy in Thiruvarurand Sivaganagai districts of Tamil Nadu and the impact ofNFSM scheme on input use, production and income ofthe beneficiary farmers (paddy) in the study area of TamilNadu. It also deals with the factors influencing theadoption of major interventons under NFSM scheme andanalyses major constraints hindering the performance ofthe NFSM scheme and also provides concluding remarksand policy suggestions from the study.
Major Findings
2. Impact of NFSM on Foodgrains Production in TamilNadu: A Time Serise Analysis.
2.1 Growth of Paddy and Pulse Crops: Impact of NFSM inTamil Nadu
When we compare different plan periods, we find that the10th and the 11th FYP periods showed better performancethat that of the 9th FYP periods. Even though the areaunder paddy crop declined over different plan periods inTamil Nadu due to urbanisation, increasing uncultivableland, the growth performance of paddy productionincreased specially, after the 10th and the 11th FYPperiods, because of effective utilisation of land holdingsand quality seeds provides by the grovernment forincreasing production of paddy in Tamil Nadu. Theagricultural officers in every district of Tamil Nadueffectively implemented the government schemes.
2.2 District-wise Growth of Paddy Crop and Impact ofNFSM
In Tamil Nadu, the area under the Non-NFSM districtsdeclined from 66.75 percent in 2007-08 to 64.89 percent in2012-13. NFSM rice cultivation districts increased from33.24 percent in 2007-08 to 35.10 percent in 2012-13. Theproduction level of the Non-NFMS districts declined from82.75 percent to 81.63 percent in the corresponding years.But for the NFSM districts, production in increased from17.24 percent of18.36 percent. In the mid-period of 2011-12, production increased to 32.84 percent. The reason isthat the NFSM districts had effectively implemented thescheme with the help of the government officials. It isnoted that the area under the NFSM districts reflectedone-third of area under cultivation. But in the non-NFSMdistricts, two-thirds of the area was under cultivationduring the study period.
Among the NFSM districts, the percentage share ofarea in the total area of paddy crop was 8.61 percent and8.48 percent in Nagapattinam and Thiruvarur, respecrively.Sivagangai's share in area was the lowest at 4.29 percentduring 2007-08. Thiruvarur, Nagapattinam andRamanathapuram had 10.65 percent, 9.52 percent and 7.80percent of the area under paddy, respectively during 2012-13. Among the NFSM districts, Thiruvarur andNagapattinam contributed 6.18 percent and 5.72 percent
of production during 2007-08. The growth trend of arearecorded 5.94 percent, 4.98 percent and 4.76 percent inPudukottai, Nagapatainam and Thiruvarur, respectivelyduring 2012-13.
During 2007-08, within the non-NFSM districts,Thanjavur and Villupuram districts occupied the highestshare of area at 8.40 percent and 8.13 percent, respectively.Both the districts recorded 9.53 percent and 9.52 percentof paddy production, respectively. But in 2012-13,Thanjavur, Villupuram, Kanchipuram, Cuddalore andThiruvannamalai districts witnessed the highest share ofproduction at 10.61 percent, 9.79 percent, 8.51 percent,8.37 percent and 8.06 percent, respectively. We find thatthe growth trend in production of the Non-NFSM districtsreveals better production than the NFSM districts in TamilNadu.
2.3 Financial Allocation to the NFSM Schemes in TamilNadu
The financial allocation substantially increased by Rs.1,366.64 lakh from Rs. 709.55 lakh in 2007-08 to Rs. 2,144.19lakh in 2011-12. The unspent amount of the governmentconsiderably declined from 619.07 lakh in 2006-07 to 31.15in 2011-12. It further declined to Rs. 17.36 lakh in 2013-14.The Total outlay for the NFSM in Tamil Nadu was Rs.12,540.88 lakh during the 11th Five Year Plan period. Butactual utilization of the fund for the NFSM scheme wasRs. 9,893.78 lakh; in terms of percentage share, the actualexpenditure was 78.89 percent of the outlay and theremaining unspent money was Rs. 2,647.10 lakh (21.11percent) during the 11th FYP period.
Thiruvarur district was allocated Rs. 4,015.53 lakh(32.02 percent) for the NFSM scheme. The highestpercentage utilization of fund was 37.21 percent by thesame district that is Rs. 3,681.58 lakh. Nagapattianamdistrict was allocated Rs. 3,848.86 lakh, and that was30.69 percent of the total allocation to Tamil Nadu underNFSM . Of that, the district utilized Rs. 2,874.08 lakh,which was 29.05 percent of the expenditure under NFSM. On the contrary, of the actual expenditure under NFSM,the Sivagangai district received the lowest allocation offound (Rs. 946.90 lakh) and that was 7.55 percent of theoutlay under the scheme and the expenditure was Rs.791.95 lakh during the 11th FYP 16.4 percent of the allocatedamount was unutilized by the district.
Nagapattinam district was having the unspentmoney to the tune of Rs. 974.78 lakh, (25.33 percent of theoutlay). Followed by this, Podukottai's unspent moneyunder the scheme was Rs. 787.25 lakh during the 11th FYP.The percentage share of the unspent money for the NFSMin Tamil Nadu among the different districts varied from8.58 percent (Thiruvarur) to 33.36 percent (Pudukottai). InPudukottai district, nearly one-third of the outlay was
32 Agricultural Situation in India
unspent. This may have something to do with governanceat the project management level and the attitude of thecultivators.
It is inferred that the total expenditure on the NFSMallocation declined over a period of seven years in thestate of Tamil Nadu. The percentage change in theexpenditure on the NFSM in Tamil Nadu increasedfrom -82.77 percent in 2007-08 to 14.21 percent in 2009-10and it further increased to 21.27 percent in 2010-11. Whencompared to previous year's allocation of expenditure tothe agricultural sector, it was found that there was anincrease in terms of expenditure. The correlation coefficientof the value of years and expenditure on the NFSM wasfound to be 0.17 percent.
3. Household Characteristics, Cropping Pattern andProduction Structure
3.1 Socio-economic Profile of the Sample Households
The majority of both types of farmers belonged to OtherBackward Class. About 90 percent and 94 percent of theNFSM and Non-NFSM farmers belonged to the OBCcategory, respectively and SC and ST farmers constituteda small percentage. The average annual income ofrespective farmers was Rs. 70,458 and Rs. 40, 250,respectively, Small and marginal farmers are in largeproportion among both the farmers. Their percentage sharein 36 percent and 43 percent, respectively. It is found thatthe two-thirds of landholdings were cultivated by themarginal and small farmers.
The large farmers had a share 42.8 percent and 35.1percent on the basis of the Net Operated Area in the NFSMand the Non-NFSM category of farmers,respectively.Medium size farmer has a share of 26.7 percentand 28.5 percent, respectively in both the categories. Onthe other hand, the lowest share of area is occupied by themarginal farmers. The average size of land holdings by theNFSM and Non-NFSM farmers was 6.36 acres and 5.01acres, respectively.
3.2 Characteristics of Operational Holdings
The average net-operated area was 6.37 acres and 4.91acres, respectively for NFSM and Non-NFSM farmers. Itis found that the NFSM beneficiaries were having 22.6percent more area than the Non-NFSM farmers. The NOA(per household) is 6.37 acres and 4.91 acres, respectivelyfor the both categories. The average owned land is 5.97acres and 4.12 acres respectively for the both categories.
The total cropping intensity was 163 percent and192 percent for the NFSM and the Non-NFSM farmers,respectively. The Non-NFSM farmers attained morecropping intensity than the NFSM farmers. But the averageirrigation intensity was 102 percent and 101 percent forboth categories, respectively. The irrigation intensity ofNFSM farmers is higher indicating that the land cultivatedthere is more than the land cultivated by Non-NFSMfarmers.
3.3 Sources of Irrigation and Structure of Tenancy
The river and tube well irrigation system was adoptedpredominantly. It had accounted for 72 percent and 88percent respectively. It is found that the majority of thefarmer used the canal and the tube well sources as themajor sources of irrigation. On the contrary, the rain fedirrigation sources accounted for a meagre propration. It isindicated that the majority of farmers is Sivagangai districtwere dependent upon the rain fed area, followed by tankirrigation sources. The percentage of total irrigated areafor NFSM farmers is more by 22.2 percent than the Non-NFSM farmers. The NFSM farmers use more irrigated areathan the Non-NFSM farmers. The rain fed area for NFSMfarmers is less than that of Non-NFSM farmers. It is foundthat the NFSM farmers produce more output due to regularirrigation sources.
The fixed rent (in cash) for NFSM beneficiaries wasthe highest (41 percent) for the leased-in land holders.Within the Non-NFSM farmers, crop sharing occupied thehighest share of 50.6 percent followed by fixed rent (incash) to the tune of 47 percent in the study area. TheNFSM farmers spent 2.25 percent more on fixed rent (incash) than the Non-NFSM farmers. The NFSM farmersspent 10 percent more on fixed rent (in kind) than the Non-NFSM farmers.
3.4 Cropping Pattern, Costs and Returns
Total gross cropped area is 3,345 acres and 1,141 acres forNFSM and Non-NFSM farmers during 2012-13. It declinedto 3,116 acres and 943.8 acres during 2013-14. During kharifseason, paddy occupied the highest share; it accountedfor 50.6 percent and 42.7 percent respectively for bothcategories. The NFSM farmers have more area undercultivation than the Non-NFSM farmers because of theinvolvement of more farmers.
Paddy occupied the largest area during the kharifseason and it declined during the rabi and the summerseasons because of water shortage and there was declinein the production level during those seasons. Alternatively,they cultivated groundnuts, pulses, black grampredominately. On the other hand, sugarcane, cotton,gingili and ragi were cultivated to a small extent by bothtypes of farmers. Groundnut, pulses and vegetablesoccupied the share of 5.9 percent, 4.22 percent and 2.1percent respectively during the rabi season among theNFSM beneficiaries. But for the Non-NFSM farmers, tiaccounted for 3.1 percent, 3.5 and 1.4 percent respectively,during the summer season.
The value of output for the NFSM farmers was Rs.1,80,536, as against Rs. 1.48,381 for Non-NFSM farmers.On the contrary, the value of output (pera acre) iscalculated to be Rs. 28, 342 and Rs.30,220. It is noted thatthe NFSM farmers got more value for their output than theNon-NFSM farmers.
February, 2017 33
The NFSM beneficiaries received more return of Rs.1,23,637 then Non-NFSM farmers received (Rs. 68,130).The NFSM beneficiaries received more output value andnet return than the Non-NFSM farmers. The NFSM farmersreceived subsidy from the NFSM scheme and adopted themodern technology in cultivation. Therefore, they haveproduced more output. The gross return for the NFSMfarmers increased by 2.44 percent from Rs. 27,953 duringthe kharif season to Rs. 28.636 during the summer season.But for the Non-NFSM farmers, it increased from Rs. 25,942to Rs. 27,883. It accounted for 7.48 percent.
The cost of cultivation was estimated at Rs. 18,937per acre and Rs. 19,618 per acre during the kharif season.The NFSM farmers spent 3.60 percent lesser amount thanthe Non-NFSM farmers. The cost for the NFSM farmersdeclined from Rs. 18,937 during the kharif season to Rs.18,208 during the summer season. It declined to 3.85 percentover the study period. But for the NFSM farmers, it declinedfrom Rs. 19,618 to Rs. 17,096 per acre. The cost declinedby 12.85 percent. The net return was estimated to be Rs.11,645 and Rs. 9,009 per acre during the kharif season.During the rabi season, it increased to Rs. 12,337 and Rs.9,690 per acre, respectively. The NFSM beneficiaries gotmore return was estimated to be Rs. 11,645 and Rs. 9,009per acre during the kharif season. During the rabi season,it increased to Rs. 12,337 and Rs. 9, 690 per acre,respectively. The NFSM beneficiaries got more return of21.46 percent than the Non-NFSM farmers. They receivedmore return from the paddy cultivation because of lesscost of cultivation and more output value than that of theNon-NFSM farmers.
3.5 Asset Holdings
Total asset holding per household is estimated at Rs.13,58,917 and Rs. 13,21,401 for NFSM and Non-NFSMfarmers, respectively. It is found that the NFSM farmershave 2.76 percent more asset value of than the Non-NFSMfarmers in the study area. The NFSM farmers are havingmore asset value of 2.8 percent than the Non-NFSMfarmers. Within the NFSM farmers, tractor is occpying thehighest share of 23 percent, followed by drip irrigation at20 percent. Electric pumpsets accounted for 19 percent,followed by thresher at 2.88 percent. Within the Non-NFSMfarmers, drip irrigation accounted for 30.28 percent. Tractoroccupies a share of 28.76 percent, followed by trolleyoccupying 16.67 percent.
Within the Non-NFSM farmers, the percentage shareof drip irrigation sets in total assets value is calculated tobe 30.3 percent. The value of tractors occupied a share of28.76 percent folowed by trolley occupying 16.7 percentand electric pump sets with the share of 11.6 percent. It isfound that both types of farmers make the highestinvestment in the tractor, drip irrigation, pumps set andtrolley.
3.6 Sources and Purpose of Credit
About 77 percent and 80 percent of the NFSM and Non-NFSM farmers received loan from the primary agriculturalco-operative societies, The commercial banks issued 20percent and 17 percent of loans, respectively. It is foundthat the cooperative societies and commercial banks playa very vital role in the rural credit accessibility. It is foundthat co-operative institutions and commercial banks givethe highest loan amount to the farmers.
The NFSM and the Non-NFSM farmers did not settlethe loan amount which was very huge to the commercialbanks. It accounted for Rs. 1,50,080 and Rs. 1,42,500,respectively. A majority of both categories of farmers arehaving outstanding liabilities of Rs. 41,293 and Rs. 32,083.It was found that they having highly outstanding loansfrom the commercial banks and the cooperative societies.They could not clear the loans due to the unprofitablenature of agriculture and there were no other sources forsettling the debt. Sometimes, those farmers who had theability to settle the debt, delayed repayment, with the hopethat the government would waive the loan for some reasonor other (e.g. drought).
4. NFSM Interventions and their Impact on Farming
4.1 Awareness of the NFSM Scheme
It is found that 71 percent of the farmers have knownabout the scheme and 28 percent are not aware of it. Amajority of the NFSM farmers have reported that theyknow only the benefits of NFSM scheme such as provisionof seeds, facilities or micro nutrients offered free of cost;the remaining benefits of NFSM are not known to all thesample farmers. Therefore, it is inferred that the benefitsof the scheme have not reached all.
The Agricultural Department, Government of TamilNadu have played a vital role in spreading awareness aboutthe scheme. About 61.33 percent of the NFSM beneficiariesare aware about the scheme through news papers and TV/Radio. Especially, TV/Radio station is broadcasting theNFSM scheme in the concerned districts of Thiruvarurand Sivagangai.
Tamil Nadu Agricultural University's role is importantin spreading awareness about the scheme. About 59percent of the NFSM farmers are informed about the schemebenefits. It is observed a majority of the beneficiariesreceived information from agricultural department. Thisdepartment has actively participated in spreading benefitsof the NFSM scheme to the farmers.
4.2 Costs and Subsidy Particulars of Availed NFSMBenefits
About 89 percent of NFSM beneficiaries have availedof the HYV seeds. The average benefit as per householdis Rs. 1,250. About 11 percent of NFSM beneficiaries used
34 Agricultural Situation in India
the hybrid seeds and the average cost is computed to beRs. 2,733. Sprayers account for the highest utilization bythe farmers. About 48 percent of NFSM beneficiariesutilized the sprayers for their own use. The average costbenefit is Rs. 2,211.
About 46 percent have used it and the average costis Rs. 48.5 Incentive for micro nutrients is another benefit.About 33 percent of NFSM beneficiaries have availed thebenefit and the cost benefit is Rs. 719. About 30 and 29percent of beneficiaries have enjoyed benefits of INMand IPM schemes respectively and the average benefit isestimated to be Rs. 475 and 500, respectively.
About 8 percent availed the benefits of pumpsetsunder the NFSM scheme. The average cost is Rs. 22,920.Power weeder was utilized by 5 percent of beneficiariesand 4.3 percent availed the benefits of rotavators. Theaverage cost is Rs. 27,321 and 97,680, resepectively.
In Tamil Nadu, especially, the sample farmers havereported that they are getting subsidies for only 6 itemsnamely seeds, sprayers, micro nutrients, IPM, INM andcono weeder. The remaining 13 materials are not availableto all. Timely availability of material is very essential. Farmmaterials like seeds sprayers, micro nutrients, INM, IPMand cono weeder are not available to all NFSM farmers.The Government officials could not distribute the same toall those farmers. There is shortage of farm materials andthat is the main problem. Equipments like pump sets,rotavators, power weeder or tiller are not distributed to allthe NFSM beneficiaries. The distribution of NFSM farmmaterial is a major challenging task. Only a few farmequipments are distributed to the farmers by thegovernment.
The average total cost her household was Rs. 1,59,685 during 2007-08 to 2013-14. The average subsidydistributed to the NFSM beneficiaries is Rs. 63,572. It isfound that about 60 percent of the cost is spent by thefarmers and remaining 40 percent is distributed by way ofsubsidy. It is observed that the government distributedthe subsidy for the development of paddy crop.
The percentage share of subsidy to the total cost is39.81 percent. Power weeders and sprayers account for asubsidy of 51 percent respectively. About 31 percent ofthe subsidy is availed of for using the rotavators purchase.Pump sets occupy the third larget share (44 percent) in thetotal subsidy of NFSM scheme.
Some of the costly farm materials are beingdistributed only to the larger farmers but not for marginaland small farmers under the scheme. The main reasonbehind this is borrowing capacity of the marginal and smallfarmers to busy costly farm equipments is rather low. Someof the materials like seeds, micro nutrients, pest andnutrient management, cono weeder are available easily;and the subsidy amount is also very low. It is distributedto all the beneficiaries randomly. It is found in the study,
under the NFSM scheme, the farm materials are distributedbased on availability and not for according to need at theappropriate time.
4.3 Annual Usage of Farm Equipments and their Benefits
Pumpsets are used by the NFSM beneficiaries for 17 daysin a year and area coverage is 6.84 acres. The individualbenefits is worth of Rs. 4,902. Rotavators are used for 15days and each farmer benefits to the extent of Rs. 9,300.About 14 days in a year are used for power tillers by thebenefited farmers and their value is Rs. 12,778.57. Thesprayer is used for 14 days and the benefit is Rs. 6,773.
In reality, a majority of the farm equipments are notavailable to all the NFSM beneficiaries. There are shortageof farm equipments in the agricultural department. Someequipment like pump sets, power tillers, rotavators arebeing distributed to beneficiaries according to thebackground of land holding, community influence andpolitical support. Some equipment like cono weeder andsprayers are distributed to all due to easy availability andlower cost. It is noted that the majority of NFSMbeneficiaries have not availed all farm material. It is foundfrom the study that the farm equipments offered under theNFSM scheme have not been distributed to all the needymarginal and small farmers according to their realconditions. Therefore, the real farmer for whom the schemeis designed is out of focus.
About 41 percent of the NFSM farmers reportedthat the weeds were controlled due to the usage of conoweeder. 39 percent of the beneficiaries reported that conoweeder replaced labour. Rotavator is another instrumentused by the NFSM farmers. Abour 78 percent of the NFSMfarmers have reported that it reduced the cost ofcultivation.
About 86.4 percent reported that they can use waterefficiently by to using pump sets. It is found that a majorityof the farmers have effectively controlled water wastagesin the area. About 50 percent of beneficiaries reported thatcost of cultivation has continuously declined by usingpower tillers. 43 percent of farmers reported that is reducedpost-harvest losses also. A majority of NFSM farmers haveinformed that the lower cost of cultivation and reductionin post-harvest losses are due to the use of power tillers.
Sprayers is one of the farm equipments distributedto NFSM farmers at subsidized price. About 37.3 percentof the NFSM farmers viewed that the good plant growth isdue to the use of sprayers in the farm. About 28.4 percentreported that the weed could be controlled through thisequipment. A majority of the NFSM farmers noted that thesprayers is used in the farm.
About 61 percent of the NFSM farmers reportedthat the improving production is due to the use of thecono weeder in the study are. About 33.6 percent notedthat the fall in labour cost is due to its utilization in the
February, 2017 35
farm field. About 28 percent of farmers felt that there wasan increase in price of the output because of better quality.
61 percent of the farmers viewed that there was a fallin labour cost because of the use of rotavators in the field.It is found that the rotavators reduce the labour cost. Itimplies that the limited supply of labour has forced themto use machinery, as a labour saving device. Impact ofrotavators is in terms reduction of labour cost and increasein the profit of the NFSM farmers.
About 45 percent of farmers reported that theincrease in production is due to utilization of pump sets.NFSM farmers have benefited much due to use of pumpsets in the study area. About 61 percent reported that thefall in labour cost is due to the use of power tillers. Apower tiller is very useful at the time of harvesting whenthere is scarcity of agricultural workers and high labourcost.
Owing to the use of modern farm equipment, theyare getting benefits in terms of increase in production andoutput and fall in labour cost. The impact of NFSM schemeon farmer's life is observed in increase in production,output price and fall in labour cost. A majority of the NFSMfarmers have reported that the increase in production andoutput price and fall in labour cost are the results of usingcono weeder, rotavators, pump sets and power tillersthrough NFSM scheme in the study area.
4.4 Cost and Return of Paddy Crop in Kharif Season(2012-13)
The cost of cultivation per acre is Rs. 18,937 and Rs. 19,618for NFSM beneficiaries and Non-NFSM farmers,respectively. When wer compare to the two groups offarmers, NFSM beneficiaries have incurred less cost thanthe Non-NFSM farmers. it is observed that the subsidy isdistributed to the NFSM beneficiaries in the study area;therefore the cost of cultivation is reduced.
The cost of hired labour accounts for the highestshare in the total cost. The percentage share in the totalcost is more or less the same imputed for both groups (Rs.6,902) and Rs. 6,920. Family labour occupies the nexthighest share. Its value is Rs. 4,017 and Rs. 4,027 for theNFSM and Non-NFSM farmers respectively. The cost ofhired and family labour occupies the highest share of 56.5percent and 55.8 percent for NFSM and Non-NFSM farmersrespectively in the study area. The cost of labour is nearlyhalf of the total cost of cultivation because of the limitedsupply of labour for cultivation.
The gross income received by NFSM beneficiariesand Non-NFSM farmers are Rs. 30,582 and Rs. 28,627.Among both the categories of farmers, NFSM beneficiariesreceived more gross income by 6.40 percent (Rs. 1955)than that of Non-NFSM farmers. It indicates that the NFSMfarmers have got more income due to more production(21.38 quintal per acre) and lower cost of cultivation.
The net income received is Rs. 11,645 and Rs. 9,009for both the categories of farmers. NFSM beneficiarieshave received more income by 22.64 percent (Rs. 2,636)than that of Non-NFSM farmers in the study area. It isnoted that the NFSM farmers have got more yield per acre(21.38 quintal/acre) than that of Non-NFMS farmers (19.56quintal/acre).
The cost per quintal for NFSM beneficiaries andNon-NFSM farmers is Rs. 892 and Rs. 1,003 respectively.NFSM beneficiaries incurred 12.41 percent lower cost (perquintal) than Non-NFSM farmers. It is observed that thecost for NFSM farmers is lower than Non-NFSM farmersand it affects gross and net income of farmers.
4.5 Cost and Return of Paddy in Rabi and Summer Season(2012-13)
The cost of cultivation is Rs. 18,441 per acre and Rs. 18,512per acre for the NFSM beneficiaries and Non-NFSMfarmers respectively. The percentage share of hired labourin the total cost is accounts for 34.63 percent (Rs. 6,385)and 33.17 percent (6,139) for the two groups of farmers.NFSM beneficiaries have spent more on hired labour thanthat of Non-NFSM farmers. The percentage share of thecost of family labour in the total cost is the highest share.It accounts for Rs. 3,917 (21.53 percent) and Rs. 3,942(21.29 percent) for the both categories of farmers. Thecost of hired and family labour accounts for half of thetotal cost of cultivation.
The gross income of NFSM beneficiaries and Non-NFSM farmers is Rs. 30,779 and Rs. 28, 202 per acre. It isobserved that the NFSM farmers got more income by 8.37percent (Rs. 2,576) than Non-NFSM farmers in the studyarea. It is indicated that the NFSM farmers produce moreoutput (21.24 quintal) than that of Non-NFSM farmers(19.46 quintal). It is observed that the cost of cultivationfor NFSM farmers is less than that of Non-NFSM farmers.Therefore, it leads to more gross income to the NFSMbeneficiaries in the study area. The net income of bothtypes of farmers is estimated at Rs. 12,337 and Rs. 9,690.NFSM beneficiaries get more income by 21.45 percent (Rs.2,646) than Non NFSM farmers. It is observed that theNFSM beneficiaries received subsidy and farm equipmentfor cultivating paddy in the study area. Therefore, theyearn more income by proper utilisation of farm equipment,seeds, micro nutrients and cono weeder in the study area.
From a comparative study of kharif and rabi/summerseason during 2012-13, we find that the NFSM beneficiariesreceived subsidy to cultivate the paddy crop in the studyarea. Therefore, they earned more income with lower costof cultivation from this scheme than that of Non-NFSMfarmers. This scheme has created confidence among thefarmers in the study area for generating more income. Acomparative study of tables 4.7 and 4.8 reveals that NFSMbeneficiaries who cultivate paddy earn more net incomethan the non-NFSM farmers during kharif as well as rabi/summer seasons. The former earn 29 percent and 27 percent
36 Agricultural Situation in India
more net income than the latter during the kharif and rabi/summer seasons, respectively. The cost per quintal ofpaddy is lower by 12.4 percent and 9.6 percent for theNFSM beneficiaries and non-NFSM farmers during kharifand rabi/ summer seasons, respectively.
4.6 Marketed Surplus and Marketing Channels
About 48 percent and 42 percent of the NFSM and Non-NFSM farmers sell their agricultural produce of paddy inthe regulated markets. The remaining 16 percent and 21percent of farmers sell their produce in the co-operativesociety in a village. About 95 percent of the NFSM farmerssell their quantity produced in the co-operative societyand 94 percent of beneficiaries sell their quantity producesin the regulated markets. Among Non-NFSM farmers, 94percent sell their marketable surplus in the wholesale marketand 92.4 percent of farmers sell their quantity in theregulated markets.
5. Participation Decision, Constraints and Suggestionsfor Improvement of NFSM Scheme
5.1 Factors Influencing Participation of Farmers in NFSMScheme
In the case of NFSM scheme in Tamil Nadu, nearly25 percent of the districts (8 districts) have implementedthe scheme and it is successfully going on. To analyzeand understand the role of NFSM scheme in determiningfactors which influence participation, the study has usedlogistic regression model. The logistic regression modelpertains to examining the impact of farmer's participationin NFSM schemes in Tamil Nadu. One of the main objectivesof the study is to find out the factors influencing thebeneficiaries in NFSM schemes in Tamil Nadu with regardto their livelihood.
As expected B3, B4 and B6 have negative sign, andBl, B2, B5, B7, B8 and B9 have positive sign. Therefore theabove set regression results clearly show that when ratioof irrigated to the total operational area increases, it willlead to increase in credit availed (per acres) and farm assetvalue (in rupees) and also other factors such as age,education, caste are also positively influencing the NFSMbeneficiaries. But except education (illiterate), caste andfarm asset value (in rupees) all others factors are notstatistically significant. It means that education, caste andfarm assets are not major factors determining thebeneficiaries in NFSM scheme, whereas income fromfarming, family size or number of family members dependenton farming, operational holding and education (highersecondary) negatively influenced the beneficiaries ofNFSM scheme. But except family size, all other factors arenot statistically significant.
So the above result clearly explains that excepteducation (illiterate), family size, caste (SC/ST) and creditavailed (per acre), all other factors are not statisticallysignificant and also education (higher secondary),
operational holdings (acres), family size or number of familymembers dependent on farming, and income from farmingnegatively influenced the beneficiaries in NFSM schemein Tamil Nadu on farmer's livelihood.
5.2 Constraints faced in Availing the NFSM Benefits
About 77 percent of beneficiaries informed that theeligibility criteria for availing the subsidy are provided tothe households and they are correctly followed by thegovernment officials in the study area. In the eligibilityconditions for availing of the benefits, the Government ofTamil Nadu has adopted significant criteria. The officialasked land documents for availing such benefits.
About 64 percent of farmers informed that theinformation about the NFSM scheme reached correctly tothe households. The Government of Tamil Nadu informedabout the scheme through newspapers, TV/ Radio. Still, asizable section of the farmers are not aware of the schemeeven though the scheme is a decade old.
About 32 percent of the beneficiaries answered thatthey knew about the procedure for the subsidies to availthose benefits. Of these, majority of the beneficiaries wereof the opinion that the procedure for availing such benefitswas rather difficult. Each farmer is asked to produce theland records with attestation from Village AdministrativeOfficer. Sometimes, the VAO has to be bribed for signingthe land document. Otherwise, the selected farmers willnot get the benefits easily.
Every farmer is submitting his land records to theGovernment of Tamil Nadu. They asked verification fromVAO for authentification of land records in a village. VAOtakes a lot of time for issuing certificate of land records. Itis observed that the majority of the farmers are faced withdifficulties for availing those documents from VAO.Therefore, the Government of Tamil Nadu has simplifiedthe method of procedure for selection of beneficiaries.Otherwise, farmers will be put to unnecessary hardship.
The beneficiaries have not received the subsidy intime. There is time gap in availing the subsidy issued tothe farmers; often, they get it after the cultivation of thecrop. That is major problem in the study area. Therefore,seeds and other inputs have to be distributed to thebeneficiaries in time; otherwise, efficiency of theirproduction process gets wasted. About 63.3 percent ofthe farmers have informed that the subsidy distributionafter the purchase of inputs is the major problem. So,Government has to distribute farm material in time.
Generally, subsidy is not distributed in time. This isa impediment in the NFSM scheme in Tamil Nadu. About81 percent of beneficiaries are of the opinion that it takesa long-time for availing such benefits in the study area.Therefore, subsidy is to be distributed in time for plantation.Otherwise, farmers will suffer as they have to spend theirown money for purchasing seeds and other inputs duringthat time.
February, 2017 37
About 50 percent of farmers informed that the largefarmers are enjoying more subsidy than the marginal andsmall farmers in the study area. The government officialsmainly support the large farmers and distribute moresubsidies to them. This affects the small and marginalfarmers. Another constraint is the quality of seeds. About57 percent of farmers reported that the quality of seed ispoor in the study area. A majority of beneficiaries reportedthat they are supplied poor quality seed. This is anothermajor problem faced by the farmers in the study area. Thus,distribution of quality seeds is a main issue in the scheme.
In conclusion, we may say that the poor quality ofseeds is a major problem. Secondly, subsidy is notdistributed in time and a long time is taken for distributionof seeds and inputs. Third, procedure for giving subsidyis not easy and it takes much time. Certificate from VAO isvery essential for subsidy distribution. Fourth, delay inpayment of subsidy is another problem in the study area.A majority of them reported that they were not receivingthe subsidy even after completion of farm process.
5.3 Suggestions for Improvement of the NFSM Scheme
About 22 percent of the NFSM beneficiariessuggested that there is need for simplifying the procedurefor availing the benefit of the NFSM scheme in the studyarea. A majority of the farmers are asked to submit theland (chitta documents) documents and certificate fromVAO for availing the benefits. The present system istime-consuming. 20 percent of farmers have informed thatthe subsidy should be increased. A majority of the farmersdo not receive all the subsidies. Only a few farm subsidiesare distributed to the farmers. It is observed that the costof cultivation has increased over period of time. Therefore,farmers have increased huge losses. To solve this problem,subsidy is to be increased.
Only about 16 percent of farmers reported that qualitymaterial is distributed in time. That means, quality inputslike seeds, micro nutrients, 1PM and 1NM are notdistributed by the Government of Tamil Nadu. The farmersreported that quality inputs are very essential for increasingthe production of paddy. Any scheme of the governmentis mainly dependent upon the effective participation ofthe farmers. About 14.3 percent of farmers reported thatgovernment support was needed for the success of thescheme. Some farmers reported that the subsidy shouldbe increased and quality material be distributed in time tothe farmers. Some said that the NFSM benefits are to beextended to all the farmers in a village. Simplifying thescheme is one of the suggestions given by the farmers.
Some of the suggestions for improvement of theNFSM scheme among Non-Beneficiaries are shown in Table5.4. About 25.8 percent of the Non-Beneficiaries reportedthat the benefits should be given to the poor farmers(marginal and small farmers) in the study area. It is foundthat the majority of the benefits are enjoyed by the large
landholders in the study area. They have links withgovernment officials and they get information about thescheme and subsidy immediately after it is announcedand work to receive the benefits.
About 25.4 percent replied that they are not awareof the scheme. Therefore, they suggested thatadvertisement might be given about the NFSM scheme. Itis found that advertisement is given through mass mediaand newspapers in the state as the scheme is very essentialfor benefits of the farmers.
About 21 percent replied that they are informedabout the importance of NFSM scheme's in the study area.It is found that one-fourth of the non-beneficiary farmersdid not have awareness about the importance of thescheme. Therefore, Government Officials should informabout the importance of NFSM scheme to all the farmers.
5.4 Reasons for Non-Participation in the NFSM Scheme
The reasons for non-participation in the NFSM Schemefor Non-beneficiaries in the study area are given in Table5.5. About 35 percent of non-beneficiaries informed aboutthe lack of information about the NFSM scheme, as thereason for non-participation in NFSM scheme. It is alsofound that a majority of the non-beneficiaries are eitherilliterate or possess minimum level of education. Therefore,they are in partial ignorance about the scheme.
About 19 percent of non-beneficiaries reported thatthe political and community influence is the main reasonfor non-participation in the NFSM scheme. Politicalsupport and community influence play a major role in thedetermination for availing the benefits and funds to theNFSM farmers. They expressed the opinion that localleaders and panchayat presidents decide who shouldbenefit from the NFSM scheme in the study area.
About 18 percent of farmers reported that thegovernment official did not inform about scheme and thatwas the reason for their non-participation in the scheme.Government officials informed landlords and farmers withpolitical clout.
5.5 Suggestions for the inclusion of Non- Beneficiariesfor availing Benefits under NFSM Scheme
About 32 percent of the non-beneficiaries reported thatthe government officials did inform about the NFSMscheme for inclusion of all farmers. It is found thatgovernment official's support is needed for inclusion inthe scheme.
About 30 percent of non-beneficiaries informed thatthe government needs to extend the scheme to all thefarmers in the study area. It is found that only select fewfarmers are benefited regularly and not all the farmers.
About 22 percent reported that the awareness campis needed for inclusion of all farmers in the NFSM scheme.It is found that the awareness camp is necessary for the
38 Agricultural Situation in India
development of farmers at the village level. Therefore,awareness campaign at the village level in the study areais very essential one.
6.1 Policy Implications
Though the scheme as a whole has succeeded, the studyhas come out with many implications. The NFSM and Non-NFSM farmers have suffered a lot to avail the benefits ofany such scheme. Over a period of time, a number ofschemes have been launched by the Union and StateGovernments in India. However, there is not muchimprovement in the farmers' level of living. Against suchbackdrop, the following are some of the specific policysuggestions.
• The state government needs to simplify theselection process for the NFSM scheme.Otherwise, farmers have to face much hardshipand many of them would miss the scheme.
• The state government must take all the necessarysteps to ensure the distribution of the qualityinputs like seed and farm materials with subsidyin time without any delay so that the farmers canmake use of them before cultivation.
• The state government needs to ensure theadequate financial support to the farmers for thepurchase of farm material within the prescribedtime.
• The government should make arrangements toprovide farming and harvesting machines for hireduring the seasons.
• The due subsidies must be given to all thoseselected beneficiaries in a village.
• Subsidy for seed and farm inputs needs to beincreased for the benefits of the farmers giventhe escalation of the cost of cultivation.
• The procedures of the NFSM scheme needs tobe simplified and the scheme must be expandedto cover all the farmers in a village.
• In addition to the advertisement through massmedia and newspapers about the scheme,government officials should inform about theNFSM scheme. Their support is the most criticalone for the inclusion of the farmers in the scheme.
• The awareness camp is needed for thedevelopment of farmers in a village.
• Preference will be given to traditional and modernseed varieties. Subsidy should be continued tothose who have already availed such benefits.
• Amount of subsidy should be increased for theseed, fertilizers, pesticides and other farm material.
• MSP should be revised periodically based onthe experts view and not by political decisionswhich is always driven by the contingencies ofdeficit cutting.
• Hundred percent subsidies are to be given forthe purchase of quality seed by all the deservingfarmers.
• NFSM subsidy material like seed, input and farmmaterial to be given to all the selectedbeneficiaries in a village.
• The Government should ensure the quality offarm equipments given under the scheme.
• Urgent efforts need to be made to improve thequality of farm equipments/ implements to all thebeneficiaries.
• Government should eliminate intra-districtinequality in the distribution of farm equipments.
• Agricultural Officer should make regular visits tothe selected villages.
• Certified seed to be issued for increasing riceproduction in the state.
The findings suggest that after the implementationof the NFSM scheme, there has been significantimprovement in the farmer's life in the study area. NFSMbeneficiaries are in a better position with improvedperformance in terms of input use, production,productivity in comparison with that of the Non-NFSMfarmers. Further, many of the selected villages in the studyarea are yet to satisfy the existing coverage norms. Thefarmers in the study area are not well equipped withadequate farm materials like cono weeder, multiple planters,power weeder, pump sets, sprayers and power tillers asthey have not been provided these equipments under thescheme. They have been given only a limited support likethe provision of seeds and inputs. Besides, there iswidespread intra-district disparity in terms of subsidy andbenefits distributed.
The shortages are not only in farm equipments, butalso in seeds, other inputs and farm implements in thestudy area; but they have not been given for the areaswith shortages of such inputs. Sometimes, the AgriculturalOfficers do not visit the farm field in the village. There isneed for monitoring. Even the available farm equipmentsunder the NFSM scheme are not distributed equally to allthe beneficiaries; only select materials are provided. Thequality of farm material and equipments given to thebeneficiaries is yet another concern. However, if the stategovernment is more proactive to strengthen and expandthis scheme in Tamil Nadu, it will certainly help the farmersas well as the economy as whole in increasing the inputuse, production, productivity and income.
February, 2017 39
COMMODITY REVIEWS
Foodgrains
All India Index Number of Wholesale Prices
(Base: 2004-2005=100)
Commodity Weight WPI for the WPI for the WPI Percentage change during(%) Month of Month of A year ago
December 2016 November 2016A month A year
1 2 3 4 5 6 7
Rice 1.793 247.7 248.8 237.3 -0.44 4.38
Wheat 1.116 251.7 245.0 223.1 2.73 12.82
Jowar 0.096 302.4 293.4 293.6 3.07 3.00
Bajra 0.115 298.0 293.2 270.0 1.64 10.37
Maize 0.217 277.0 277.9 267.1 -0.32 3.71
Barley 0.017 290.6 286.8 243.9 1.32 19.15
Ragi 0.019 464.3 445.2 328.6 4.29 41.30
Cereals 3.373 255.6 253.5 237.8 0.83 7.49
Pulses 0.717 447.1 462.8 378.5 -3.39 18.12
Foodgrains 4.09 289.2 290.2 262.4 -0.34 10.21
Source: Office of the Economic Adviser, M/O Commerce and Industry.
Procurement of Rice
5.03 million tonnes of rice (including paddyconverted into rice) was procured during December 2016as against 3.69 million tonnes of rice(including paddyconverted into rice) procured during December 2015.The
total procurement of rice in the current marketing seasoni.e 2016-2017, up to 28.12.2016 stood at 21.28 million tonnes,as against 17.65 million tonnes of rice procured, duringthe corresponding period of last year. The details are givenin the following table:
Procurement of Rice(In Thousand Tonnes)
State Marketing Season Corresponding Marketing Year
2016-17 Period of last Year (October-September)
upto 28.12.2016 2015-16 2015-16 2014-15
Procurement Percentage Procurement Percentage Procurement Percentage Procurement Percentage
to Total to Total to Total to Total
1 2 3 4 5 6 7 8 9
Andhra Pradesh 828 3.89 740 4.19 4326 12.65 3591 11.17
Chhatisgarh 2803 13.17 2177 12.33 3442 10.06 3423 10.64
Haryana 3570 16.77 2861 16.21 2861 8.36 2015 6.27
During the month of December,2016 the Wholesale PriceIndex (Base 2004-05=100) of pulses decreased by 3.39%,
cereals increased by 0.83% & foodgrains decreased by0.34% respectively over the previous month.
40 Agricultural Situation in India
Maharashtra 101 0.47 51 0.29 230 0.67 199 0.62
Punjab 11044 51.89 9349 52.96 9350 27.33 7786 24.21
Tamil Nadu 8 0.04 40 0.23 1191 3.48 1049 3.26
Uttar Pradesh 544 2.56 725 4.11 2910 8.50 1698 5.28
Uttarakhand 299 1.40 229 1.30 598 1.75 465 1.45
Others 2085 9.80 1480 8.38 9301 27.19 11936 37.11
Total 21282 100.00 17652 100.00 34209 100.00 32162 100.00
Source: Department of Food & Public Distribution.
Procurement of Wheat
(In Thousand Tonnes)
State Marketing Season Corresponding Marketing Year
20116-17 Period of last Year (April-March)
(upto 30.06.2016) 2015-16 2015-16 2014-15
Procurement %to Total Procurement % age Procurement %age Procurement %age
to Total to Total to Total
1 2 3 4 5 6 7 8 9
Haryana 6722 29.32 6692 24.00 6778 24.13 6495 23.20
Madhya Pradesh 3990 17.40 7195 25.80 7309 26.02 7094 25.34
Punjab 10645 46.42 10346 37.10 10344 36.83 11641 41.58
Rajasthan 762 3.32 1300 4.66 1300 4.63 2159 7.71
Uttar Pradesh 802 3.50 2267 8.13 2267 8.07 599 2.14
Others 9 0.04 85 0.30 90 0.32 6 0.02
Total 22930 100.00 27885 100.00 28088 100.00 27994 100.00
Source: Department of Food & Public Distribution.
1 2 3 4 5 6 7 8 9
The total procurement of wheat in the current marketingseason i.e 2016-2017 up to June, 2016 is 22.93 million tonnes
against a total of 27.89 million tonnes of wheat procuredduring last year. The details are given in the followingtable :
February, 2017 41
Commercial Crops
Oil Seeds and Edible Oils
The wholesale Price Index (WPI) of nine major oilseeds asa group stood at 211.1 in December, 2016 showing anincrease of 2.0% over the previous month and a decreaseof 3.3% over the year. The WPI of copra (coconut)increased by 6.4%, groundnut seed by 6.3%, gingelly seedby 1.9%, soybean by 1.3%, safflower (kardi seed) by0.7% and cotton seed by 0.1% over the previous month.The WPI of sunflower decreased by 3.2%, rape & mustardseed by 1.6% and niger seed by 0.7% over the previousmonth.
The WPI of edible oils as a group stood at 157.2 inDecember, 2016 showing an increase of 0.4% and 4.9%over the previous month and year respectively. The WPIof groundnut oil increased by 2.3%, copra oil by 2.0% andsoybean oil by 0.8% over the previous month. The WPI ofgingelly oil decreased by 0.8%, sunflower oil by 0.6%,mustard & rapeseed oil by 0.6% and cotton seed oil by0.4%, over the previous month.
Fruits & Vegetable
The WPI of fruits & vegetable as a group stood at 223.7 inDecember, 2016 showing a decrease of 9.2% & 17.4% overthe previous month and year respectively.
Potato
The WPI of potato stood at 219.6 in December, 2016showing a decrease of 20.2% over the previous monthand an increase of 26.4% over the previous year.
Onion
The WPI of onion stood at 256.8 in December, 2016showing an increase of 4.8% over the previous month anda decrease of 37.2% over the previous year.
Condiments & Spices
The WPI of condiments & spices (group) stood at 351.4 inDecember, 2016 which shows an increase of 0.6% over theprevious month and a decrease of 5.7% over the year. TheWPI of black pepper increased by 1.7% & chillies (dry) by1.5% over the previous month. The WPI of turmericdecreased by 0.6% over the previous month.
Raw Cotton
The WPI of raw cotton stood at 218.5 in December, 2016showing an increase of 1.5% and 16.4% over the previousmonth & year respectively.
Raw Jute
The WPI of raw jute stood at 403.5 in December, 2016showing a decrease of 4.1% & 11.0% over the previousmonth and year respectively.
Wholesale Price Index of Commercial Crops
COMMODITY LATEST MONTH YEAR % VARIATION OVER
December, 2016 November, 2016 December, 2015 MONTH YEAR
OIL SEEDS 211.1 206.9 218.3 2.0 -3.3
Groundnut Seed 250.9 236.0 244.2 6.3 2.7
Rape & Mustard Seed 235.2 239.1 246.9 -1.6 -4.7
Cotton Seed 229.2 228.9 202.7 0.1 13.1
Copra (Coconut) 130.1 122.3 139.1 6.4 -6.5
Gingelly Seed (Sesamum) 317.9 312.0 291.4 1.9 9.1
Niger Seed 319.8 321.9 402.4 -0.7 -20.5
Safflower (Kardi Seed) 160.2 159.1 150.0 0.7 6.8
Sunflower 163.8 169.3 200.0 -3.2 -18.1
Soyabean 175.4 173.1 212.7 1.3 -17.5
EDIBLE OILS 157.2 156.6 149.9 0.4 4.9
Groundnut Oil 213.5 208.8 192.8 2.3 10.7
42 Agricultural Situation in India
COMMODITY LATEST MONTH YEAR % VARIATION OVER
December, 2016 November, 2016 December, 2015 MONTH YEAR
Cotton Seed Oil 203.5 204.3 195.2 -0.4 4.3
Mustard & Rapeseed Oil 185.2 186.3 191.1 -0.6 -3.1
Soyabean Oil 156.7 155.4 150.6 0.8 4.1
Copra Oil 140.3 137.6 145.1 2.0 -3.3
Sunflower Oil 132.8 133.6 133.8 -0.6 -0.7
Gingelly Oil 183.9 185.3 158.3 -0.8 16.2
FRUITS & VEGETABLES 223.7 246.3 270.8 -9.2 -17.4
Pota to 219.6 275.3 173.7 -20.2 26.4
Onion 256.8 245.1 408.9 4.8 -37.2
CONDIMENTS & SPICES 351.4 349.2 372.6 0.6 -5.7
Black Pepper 731.3 719.1 740.7 1.7 -1.3
Chillies(Dry) 396.0 390.3 396.7 1.5 -0.2
Turmeric 242.9 244.4 267.1 -0.6 -9.1
Raw Cotton 218.5 215.3 187.7 1.5 16.4
Raw Jute 403.5 420.9 453.4 -4.1 -11.0
February, 2017 43
STA
TIS
TIC
AL
TA
BL
ES
Wa
ges
1. D
AIL
Y A
GR
ICU
LTU
RA
L W
AG
ES
IN S
OM
E S
TAT
ES
(CA
TE
GO
RY
-WIS
E)
(In
Rs.
)
Sta
teD
istr
ict
Cen
tre
Mon
th &
Yea
rD
aily
Fie
ld L
abou
rO
ther
Agr
i.H
erds
man
Ski
lled
Lab
our
No
rmal
Lab
our
Wo
rkin
gC
arp
ente
rB
lack
Cob
bler
Hou
rs S
mit
h
MW
MW
MW
MM
M
And
hra
Pra
desh
Kri
shna
Gha
ntas
ala
Dec
,15
82
00
20
03
00
NA
25
0N
A3
00
NA
NA
Gun
tur
Tad
ikon
daD
ec,1
58
27
02
18
27
5N
A2
25
NA
NA
NA
NA
Tel
anga
naR
anga
Red
dyA
ruta
laF
eb,
168
35
02
69
NA
NA
NA
NA
35
03
00
NA
Kar
nat
aka
Ban
galo
reH
aris
andr
aJu
ne,,
168
37
53
05
40
03
05
40
03
05
60
04
00
NA
Tu
mk
ur
Gid
laha
liN
ov,
158
18
01
70
18
0N
AN
AN
A2
00
19
0N
A
Mah
aras
htra
Nag
pur
Mau
daS
ep,
148
10
08
0N
AN
AN
AN
AN
AN
AN
A
Ahm
edna
gar
Ako
leS
ep,
148
NA
NA
NA
NA
NA
NA
NA
NA
NA
Jhar
khan
dR
anch
iG
aita
lsoo
dM
arch
,14
81
20
12
01
00
10
07
57
52
00
20
0N
A
44 Agricultural Situation in India
1.1
DA
ILY
AG
RIC
ULT
UR
AL W
AG
ES
IN S
OM
E S
TAT
ES (
OPE
RA
TIO
N-W
ISE)
(In
Rs.
)
Sta
teD
istr
ict
Cen
tre
Mo
nth
Ty
pe
of
No
rmal
Plo
ughi
ngS
owin
gW
eedi
ngH
arve
stin
gO
ther
Her
dsm
anS
kill
ed L
abou
rs&
Yea
rL
abou
rD
aily
Agr
i-C
arp
ente
rB
lack
Cob
bler
Wo
rkin
gL
abou
rS
mit
hH
ours
Ass
amB
arp
eta
Lah
arap
ara
May
, 16
M8
30
02
50
25
02
50
25
02
00
35
03
00
25
0W
8N
A2
00
20
02
00
20
0N
AN
AN
AN
A
Bih
arM
uzaf
farp
urB
halu
i R
asul
June
,16
M8
30
03
00
30
03
00
30
03
00
40
04
00
NA
W8
NA
30
0N
AN
A3
00
NA
NA
NA
NA
She
khpu
raK
utau
tJu
ne,1
6M
82
50
NA
22
51
00
NA
NA
50
0N
AN
AW
8N
AN
AN
AN
AN
AN
AN
AN
AN
A
Chh
atti
sgar
hD
ham
tari
Sih
ava
July
,16
M8
NA
NA
17
0N
A1
50
15
02
50
20
02
50
W8
NA
NA
15
0N
A1
00
10
0N
AN
A1
50
Guj
arat
*R
ajk
ot
Raj
ko
tS
ep,
15M
82
15
20
51
63
18
01
50
18
84
50
45
03
60
W8
NA
17
51
50
17
51
35
11
7N
AN
AN
A
Dah
odD
ahod
Sep
,15
M8
18
01
60
16
01
60
13
0N
A2
60
21
02
10
W8
NA
16
01
60
16
01
30
NA
NA
NA
NA
Har
yan
aP
anip
atU
gara
kher
iM
ach,
16
M8
40
04
00
40
04
00
40
0N
AN
AN
AN
AW
8N
A3
00
30
03
00
30
0N
AN
AN
AN
A
Him
acha
l P
rade
shM
andi
Man
diJu
ne,1
6M
8N
A1
82
18
21
82
18
21
82
30
03
00
NA
W8
NA
18
21
82
18
21
82
18
2N
AN
AN
A
Ker
ala
Koz
hiko
deK
oduv
ally
Mar
ch,1
6M
4-8
12
90
67
5N
A6
75
10
08
NA
82
5N
AN
AW
4-8
NA
NA
47
55
75
55
0N
AN
AN
AN
A
Pal
akka
dE
lapp
ally
Mar
ch,1
6M
4-8
NA
50
0N
A5
00
46
7N
A6
00
NA
NA
W4
-8N
AN
A3
00
30
03
00
NA
NA
NA
NA
Mad
hy
aH
osha
ngab
adS
anga
rkhe
raS
ep,
16M
8N
AN
AN
AN
AN
AN
AN
AN
AN
AP
rade
shW
8N
AN
AN
AN
AN
AN
AN
AN
AN
A
Sat
naK
ota
rS
ep,1
6M
82
00
20
02
00
20
02
00
20
03
00
30
03
00
W8
NA
20
02
00
20
02
00
20
0N
AN
AN
A
Shy
opur
kala
Vij
aypu
rS
ep,1
6M
8N
A3
00
30
03
00
30
0N
A3
00
30
0N
A
W8
NA
30
03
00
30
0N
AN
AN
AN
AN
A
February, 2017 45
1.1
DA
ILY
AG
RIC
ULT
UR
AL W
AG
ES
IN S
OM
E S
TAT
ES (
OPE
RA
TIO
N-W
ISE)—
CO
NT
D.
(In
Rs.
)
Sta
teD
istr
ict
Cen
tre
Mo
nth
Ty
pe
of
No
rmal
Plo
ughi
ngS
owin
gW
eedi
ngH
arve
stin
gO
ther
Her
dsm
anS
kill
ed L
abou
rs&
Yea
rL
abou
rD
aily
Agr
i-C
arp
ente
rB
lack
Cob
bler
Wo
rkin
gL
abou
rS
mit
hH
ours
Odi
sha
Bha
drak
Cha
ndba
liJu
ly,
16M
83
00
30
03
00
NA
30
03
00
40
03
50
25
0W
8N
AN
A2
00
NA
20
02
00
NA
NA
NA
Gan
jam
Ask
aJu
ly,
16M
83
50
30
02
50
30
03
00
NA
35
03
80
30
0W
8N
A2
00
20
02
00
20
02
00
NA
NA
NA
Pun
jab
Lud
hiya
naP
akho
wal
Nov
, 15
M8
39
5N
A3
95
39
53
80
10
04
00
40
02
00
W8
NA
NA
NA
NA
NA
NA
NA
NA
NA
Raj
asth
anB
arm
erK
usee
pA
ug,1
5M
8N
AN
A3
00
NA
NA
30
07
00
50
0N
AW
8N
AN
A2
00
NA
NA
20
0N
AN
AN
A
Jalo
reS
arna
uA
ug,1
5M
8N
AN
AN
AN
AN
AN
AN
AN
AN
AW
8N
AN
AN
AN
AN
AN
AN
AN
AN
A
Tam
il N
adu*
Th
anja
vu
rP
ulv
arn
ath
amJu
ne,
16M
8N
A3
43
NA
35
53
44
NA
NA
NA
NA
W8
NA
NA
11
01
33
12
8N
AN
AN
AN
A
Tir
unel
veli
Mal
ayak
ulam
June
, 16
M8
NA
35
03
75
40
04
91
NA
NA
NA
NA
W8
NA
NA
17
11
80
32
9N
AN
AN
AN
A
Tri
pu
raS
tate
Ave
rage
June
, 15
M8
29
42
80
28
02
81
27
92
95
32
82
91
29
7W
8N
A2
16
21
82
16
21
52
25
NA
NA
NA
Utt
ar P
rade
sh*
Mee
rut
Gan
eshp
urS
ep,1
6M
82
70
25
02
61
25
02
56
NA
38
1N
AN
AW
8N
A2
00
21
52
00
21
5N
AN
AN
AN
A
Aur
raiy
aA
urra
iya
Sep
,16
M8
17
01
75
15
02
35
17
1N
A3
50
NA
.NA
W8
NA
NA
15
02
35
17
1N
AN
AN
AN
A
Cha
ndau
liC
hand
auli
Sep
,16
M8
20
02
00
20
0N
A2
00
NA
40
0N
AN
AW
8N
A2
00
20
0N
A2
00
NA
NA
NA
NA
M-M
an
W-W
om
an
NA
- N
ot A
vail
able
* S
tate
s re
port
ed d
istr
ict
aver
age
dail
y w
ages
46 Agricultural Situation in India
Prices
2. MONTH END WHOLESALE PRICES OF CERTAIN AGRICULTURAL COMMODITIES AND ANIMAL HUSBANDRY PRODUCTS AT
SELECTED CENTRES IN INDIA
Commodity Variety Unit State Centre Dec-16 Nov-16 Dec-15
Wheat PBW 343 Quintal Punjab Amritsar 1800 1800 1600
Wheat Dara Quintal Uttar Pradesh Chandausi 1840 2050 1590
Wheat Lokvan Quintal Madhya Pradesh Bhopal 1950 2000 1580
Jowar - Quintal Maharashtra Mumbai 2400 2350 2300
Gram No III Quintal Madhya Pradesh Sehore 8460 8201 4286
Maize Yellow Quintal Uttar Pradesh Kanpur - - 1355
Gram Split - Quintal Bihar Patna 13000 8550 6040
Gram Split - Quintal Maharashtra Mumbai 12150 11900 6150
Arhar Split - Quintal Bihar Patna 10000 11000 14800
Arhar Split - Quintal Maharashtra Mumbai 7500 8750 13250
Arhar Split - Quintal NCT of Delhi Delhi 8300 9775 13350
Arhar Split Sort II Quintal Tamil Nadu Chennai 9400 11200 12800
Gur - Quintal Maharashtra Mumbai 3850 4000 3100
Gur Sort II Quintal Tamil Nadu Coimbatore 4600 4600 4000
Gur Balti Quintal Uttar Pradesh Hapur 2450 2450 2350
Mustard Seed Black (S) Quintal Uttar Pradesh Kanpur 4250 4300 4385
Mustard Seed Black Quintal West Bengal Raniganj 4500 4500 5000
Mustard Seed - Quintal West Bengal Kolkata 4750 5050 5300
Linseed Bada Dana Quintal Uttar Pradesh Kanpur 6050 6120 4425
Linseed Small Quintal Uttar Pradesh Varanasi 4780 4680 4250
Cotton Seed Mixed Quintal Tamil Nadu Virudhunagar 2200 2300 1900
Cotton Seed MCU 5 Quintal Tamil Nadu Coimbatore 2750 2500 2300
Castor Seed - Quintal Telangana Hyderabad 3200 3500 3500
Sesamum Seed White Quintal Uttar Pradesh Varanasi 8290 8470 13550
Copra FAQ Quintal Kerala Alleppey 7450 6700 6650
Groundnut Pods Quintal Tamil Nadu Coimbatore 5500 5500 4500
Groundnut - Quintal Maharashtra Mumbai 6800 6400 5900
Mustard Oil - 15 Kg. Uttar Pradesh Kanpur 1425 1480 1515
Mustard Oil Ordinary 15 Kg. West Bengal Kolkata 1565 1560 1710
Groundnut Oil - 15 Kg. Maharashtra Mumbai 1500 1500 1335
Groundnut Oil Ordinary 15 Kg. Tamil Nadu Chennai 1950 1935 1725
Linseed Oil - 15 Kg. Uttar Pradesh Kanpur 1523 1545 1455
Castor Oil - 15 Kg. Telangana Hyderabad 1118 1155 1125
Sesamum Oil - 15 Kg. NCT of Delhi Delhi 1500 1500 1385
Sesamum Oil Ordinary 15 Kg. Tamil Nadu Chennai 2220 2250 1725
Coconut Oil - 15 Kg. Kerala Cochin 1635 1515 1350
Mustard Cake - Quintal Uttar Pradesh Kanpur 2375 2300 2450
Groundnut Cake - Quintal Telangana Hyderabad 3357 3429 3429
Cotton/Kapas NH 44 Quintal Andhra Pradesh Nandyal 5000 4800 4100
Cotton/Kapas LRA Quintal Tamil Nadu Virudhunagar 4556 4000 3000
February, 2017 47
Jute Raw TD 5 Quintal West Bengal Kolkata 3900 3850 5290
Jute Raw W 5 Quintal West Bengal Kolkata 3900 3850 5230
Oranges - 100 No NCT of Delhi Delhi 542 625 650
Oranges Big 100 No Tamil Nadu Chennai 450 450 480
Banana - 100 No. NCT of Delhi Delhi 350 350 267
Banana Medium 100 No. Tamil Nadu Kodaikkanal 498 501 495
Cashewnuts Raw Quintal Maharashtra Mumbai 76000 80000 82000
Almonds - Quintal Maharashtra Mumbai 70000 70000 95000
Walnuts - Quintal Maharashtra Mumbai 70000 70000 82000
Kishmish - Quintal Maharashtra Mumbai 11000 11000 23000
Peas Green - Quintal Maharashtra Mumbai 3400 3500 4200
Tomato Ripe Quintal Uttar Pradesh Kanpur 600 1170 1400
Ladyfinger - Quintal Tamil Nadu Chennai 1500 550 4000
Cauliflower - 100 No. Tamil Nadu Chennai 1600 1500 2000
Pota to Red Quintal Bihar Patna 1300 1250 820
Pota to Desi Quintal West Bengal Kolkata 650 1200 860
Pota to Sort I Quintal Tamil Nadu Mettuppalayam 1600 2370 2303
Onion Pole Quintal Maharashtra Nashik 550 500 1250
Turmeric Nadan Quintal Kerala Cochin 15500 15500 13000
Turmeric Salam Quintal Tamil Nadu Chennai 8200 8400 9000
Chillies - Quintal Bihar Patna 8000 9500 10250
Black Pepper Nadan Quintal Kerala Kozhikode 62000 64000 64000
Ginger Dry Quintal Kerala Cochin 16000 15000 19500
Cardamom Major Quintal NCT of Delhi Delhi 125000 130500 131500
Cardamom Small Quintal West Bengal Kolkata 125000 150000 100000
Milk Buffalo 100 Liters West Bengal Kolkata 3800 3800 3600
Ghee Deshi Deshi No 1 Quintal NCT of Delhi Delhi 34684 34017 34017
Ghee Deshi - Quintal Maharashtra Mumbai 46000 46000 46000
Ghee Deshi Desi Quintal Uttar Pradesh Kanpur 36200 36400 35650
Fish Rohu Quintal NCT of Delhi Delhi 13000 12000 10000
Fish Pomphrets Quintal Tamil Nadu Chennai 35000 34500 32000
Eggs Madras 1000 No. West Bengal Kolkata 4200 3900 4250
Tea - Quintal Bihar Patna 21200 21200 21100
Tea Atti Kunna Quintal Tamil Nadu Coimbatore 34000 34000 33000
Coffee Plant-A Quintal Tamil Nadu Coimbatore 26000 26500 28000
Coffee Rubusta Quintal Tamil Nadu Coimbatore 17500 16000 14500
Tobacco Kampila Quintal Uttar Pradesh Farukhabad - 4600 4650
Tobacco Raisa Quintal Uttar Pradesh Farukhabad - 3500 3500
Tobacco Bidi Tobacco Quintal West Bengal Kolkata 13400 13000
Rubber - Quintal Kerala Kottayam 11500 11500 9100
Arecanut Pheton Quintal Tamil Nadu Chennai 32700 32700 31500
Commodity Variety Unit State Centre Dec-16 Nov-16 Dec-15
48 Agricultural Situation in India
3.M
ON
TH E
ND W
HO
LE
SAL
E PR
ICE
S OF
SOM
E IM
POR
TAN
T AG
RIC
ULT
UR
AL C
OM
MO
DIT
IES
IN IN
TER
NA
TIO
NA
L M
AR
KE
TS
DU
RIN
G Y
EAR, 2
016
Com
mod
ity
Var
iety
Cou
ntry
Cen
tre
Uni
tJA
NFE
BM
AR
AP
RM
AY
JUN
JUL
AU
GS
EP
OC
TN
OV
DE
C
12
34
56
78
91
01
11
21
31
41
51
61
7
CA
RD
AM
OM
Gua
tmal
aU
.K.
-
Dol
lar/
MT
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
9000
.00
Bol
d G
reen
Rs.
/Qtl
6128
1.00
6154
2.00
6021
0.00
5979
6.00
6025
5.00
6051
6.00
6030
9.00
6030
9.00
6013
8.00
6021
0.00
6187
5.00
6105
6.00
CA
SH
EW
Spo
t U
.K.
320s
U.K
.
-D
olla
r/M
T83
50.0
981
43.2
083
33.0
091
84.6
995
68.8
595
60.2
096
20.0
286
29.1
110
342.
1810
479.
1710
724.
8210
295.
36K
ER
NE
LS
Rs.
/Qtl
5685
5.76
5568
3.20
5574
7.77
6102
3.08
6406
3.45
6428
2.78
6446
3.75
5782
3.67
6910
6.45
7010
5.65
7373
3.14
6984
3.72
CA
ST
OR
OIL
Any
Ori
gin
Net
her-
-
Dol
lar/
MT
1374
.00
1244
.70
1244
.70
1244
.70
1274
.70
1249
.90
1249
.90
1335
.00
1439
.70
1439
.00
1438
.40
1433
.00
ex ta
nk R
otte
rdam
land
sR
s./Q
tl93
55.5
785
11.2
683
27.0
482
69.7
985
34.1
284
04.3
383
75.5
889
45.8
496
20.0
896
26.9
198
89.0
097
21.4
7
CH
ILL
IES
Bir
ds e
ye 2
005
Afr
ica
-
Dol
lar/
MT
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
4100
.00
crop
Rs.
/Qtl
2791
6.90
2803
5.80
2742
9.00
2724
0.40
2744
9.50
2756
8.40
2747
4.10
2747
4.10
2739
6.20
2742
9.00
2818
7.50
2781
4.40
CL
OV
ES
Sin
gapo
reM
adag
asca
r
-D
olla
r/M
T86
50.0
086
50.0
086
50.0
087
00.0
087
50.0
087
50.0
089
00.0
082
50.0
082
50.0
080
00.0
078
50.0
078
50.0
0R
s./Q
tl58
897.
8559
148.
7057
868.
5057
802.
8058
581.
2558
835.
0059
638.
9055
283.
2555
126.
5053
520.
0053
968.
7553
254.
40
CO
CO
NU
T O
ILC
rude
Net
herl
ands
-
Dol
lar/
MT
1155
.00
1255
.00
1545
.00
1535
.00
1430
.00
1600
.00
1500
.00
1610
.00
1475
.00
1515
.00
1575
.00
1785
.00
Phi
llip
ine/
Rs.
/Qtl
7864
.40
8581
.69
1033
6.05
1019
8.54
9573
.85
1075
8.40
1005
1.50
1078
8.61
9855
.95
1013
5.35
1082
8.13
1210
9.44
Indo
nesi
a,ci
f Rot
terd
am
CO
PR
AP
hill
ipin
esP
hill
ipin
e
-D
olla
r/M
T68
7.50
714.
5081
1.00
813.
0076
7.00
798.
5079
7.00
818.
0078
9.00
795.
5081
3.00
867.
00ci
f Rot
terd
amR
s./Q
tl46
81.1
948
85.7
554
25.5
954
01.5
751
35.0
753
69.1
153
40.7
054
81.4
252
72.1
053
21.9
055
89.3
858
81.7
3
CO
RR
IAN
DE
RIn
dia
-
Dol
lar/
MT
2000
.00
2000
.00
2000
.00
2000
.00
2000
.00
2000
.00
2000
.00
1650
.00
1650
.00
1650
.00
1650
.00
1650
.00
Rs.
/Qtl
1361
8.00
1367
6.00
1338
0.00
1328
8.00
1339
0.00
1344
8.00
1340
2.00
1105
6.65
1102
5.30
1103
8.50
1134
3.75
1119
3.60
CU
MM
IN S
EE
DIn
dia
-
Dol
lar/
MT
2200
.00
2200
.00
2500
.00
2500
.00
2500
.00
2500
.00
2500
.00
2500
.00
2500
.00
2500
.00
2500
.00
2500
.00
Rs.
/Qtl
1497
9.80
1504
3.60
1672
5.00
1661
0.00
1673
7.50
1681
0.00
1675
2.50
1675
2.50
1670
5.00
1672
5.00
1718
7.50
1696
0.00
GR
OU
ND
NU
TC
rude
Any
U.K
.
-D
olla
r/M
T12
00.0
012
00.0
012
00.0
012
00.0
012
00.0
012
00.0
012
00.0
012
00.0
012
00.0
012
00.0
012
00.0
0-
OIL
Ori
gin
cif
Rs.
/Qtl
8170
.80
8205
.60
8028
.00
7972
.80
8034
.00
8068
.80
8041
.20
8041
.20
8018
.40
8028
.00
8001
.60
-R
otte
rdam
MA
IZE
U.S
.A.
Chi
cago
C/5
6 lb
s36
9.25
359.
7536
8.50
380.
7540
4.75
393.
0033
5.75
327.
5032
9.25
354.
0035
0.75
347.
25R
s./Q
tl98
8.09
966.
7796
8.85
994.
1710
64.9
510
38.5
288
4.20
862.
4786
4.62
930.
7394
7.68
925.
81
OA
TS
CA
NA
DA
Win
ni-
Dol
lar/
MT
283.
1425
0.42
250.
9924
7.92
244.
9126
3.38
314.
3322
1.77
214.
7228
1.80
297.
1430
0.97
peg
Rs.
/Qtl
1927
.90
1712
.37
1679
.12
1647
.18
1639
.67
1770
.97
2106
.33
1486
.08
1434
.76
1885
.24
2042
.84
2041
.78
PAL
MC
rude
Net
herl
ands
-
Dol
lar/
MT
890.
0010
30.0
013
20.0
012
85.0
012
00.0
014
10.0
013
50.0
015
05.0
014
10.0
013
90.0
015
25.0
016
85.0
0K
ER
NA
L O
ILM
alay
sia/
Rs.
/Qtl
6060
.01
7043
.14
8830
.80
8537
.54
8034
.00
9480
.84
9046
.35
1008
5.01
9421
.62
9299
.10
1048
4.38
1143
1.04
Indo
nesi
a,ci
f Rot
terd
am
PAL
M O
ILC
rude
Net
herl
ands
-
Dol
lar/
MT
575.
0063
7.50
705.
0071
0.00
717.
5071
0.00
655.
0077
5.00
740.
0075
0.00
760.
0081
0.00
Mal
aysi
an/
Rs.
/Qtl
3915
.18
4359
.23
4716
.45
4717
.24
4803
.66
4774
.04
4389
.16
5193
.28
4944
.68
5017
.50
5225
.00
5495
.04
Sum
atra
, cif
Rot
terd
am
PE
PP
ER
Sar
awak
Mal
aysi
a
-D
olla
r/M
T10
000.
0010
000.
0010
000.
0010
000.
0010
200.
0010
200.
0010
200.
0010
200.
0082
00.0
082
00.0
079
00.0
079
00.0
0(B
lack
)B
lack
lab
leR
s./Q
tl68
090.
0068
380.
0066
900.
0066
440.
0068
289.
0068
584.
8068
350.
2068
350.
2054
792.
4054
858.
0054
312.
5053
593.
60
RA
PE
SE
ED
Can
ola
CA
NA
DA
Win
ni-
Can
Dol
lar/
MT
481.
2046
0.70
469.
5049
9.50
524.
8048
0.00
453.
9046
8.80
464.
2051
0.20
528.
0051
1.60
peg
Rs.
/Qtl
2334
.78
2298
.89
2378
.02
2643
.85
2707
.97
2515
.20
2312
.62
2432
.60
2358
.14
2549
.98
2690
.69
2574
.37
UK
del
iver
edU
.K.
-
Pou
nd/M
T24
7.00
247.
0024
5.00
245.
0024
5.00
232.
0025
2.00
252.
0025
5.00
250.
0031
5.00
329.
00ra
pese
ed,
Rs.
/Qtl
2415
.66
2352
.43
2314
.03
2378
.22
2405
.66
2271
.05
2222
.39
2227
.93
2208
.81
2035
.75
2696
.72
2741
.89
deli
vere
dE
rith
(buy
er)
February, 2017 49
RA
PE
SE
ED
OIL
Ref
ined
U.K
.
-P
ound
/MT
660.
0061
4.00
615.
0065
8.00
602.
0060
2.00
59
4.0
05
94
.00
67
0.0
07
26
.00
82
0.0
08
26
.00
blea
ched
and
Rs.
/Qtl
6454
.80
5847
.74
5808
.68
6387
.21
5911
.04
5892
.98
5238
.49
5251
.55
5803
.54
5947
.39
7020
.02
6883
.88
deod
oris
edex
-tan
ks,b
roke
rpr
ice
SO
YA
BE
AN
UK
pro
duce
dU
.K.
-
Pou
nd/M
T24
8.00
255.
0024
9.00
291.
0034
2.00
325.
0033
1.00
314.
0029
5.00
322.
0031
2.00
309.
00M
EA
L49
% o
il &
Rs.
/Qtl
2425
.44
2428
.62
2351
.81
2824
.74
3358
.10
3181
.43
2919
.09
2776
.07
2555
.29
2622
.05
2671
.03
2575
.21
prot
ein
('hi
-pro
')ex
-mil
l sea
fort
hU
K b
ulk
SO
YA
BE
AN
U.S
.A.
-
C/l
bs30
.87
30.9
233
.36
33.6
231
.34
31.5
529
.53
33.5
732
.64
35.7
236
.85
36.0
0O
ILR
s./Q
tl46
32.6
746
59.9
449
18.8
549
23.1
046
24.4
646
75.6
143
61.2
949
57.9
548
06.9
352
66.8
355
83.7
053
82.7
0
Ref
ined
U.K
.
-P
ound
/MT
618.
0063
9.00
650.
0061
6.00
590.
0059
6.00
653.
0071
4.00
714.
0078
6.00
769.
0082
4.00
blea
ched
and
Rs.
/Qtl
6044
.04
6085
.84
6139
.25
5979
.51
5793
.21
5834
.24
5758
.81
6312
.47
6184
.67
6400
.40
6583
.41
6867
.22
deod
oris
edex
-tan
ks,
brok
er p
rice
SO
YA
BE
AN
SU
.S.A
.
-C
/60
lbs
883.
0086
7.50
905.
2510
19.0
010
85.5
011
37.5
010
10.5
010
30.7
594
5.50
1010
.00
1034
.25
1006
.75
Rs.
/Qtl
2206
.53
2177
.03
2222
.60
2484
.68
2667
.14
2807
.02
2485
.09
2534
.89
2318
.64
2479
.78
2609
.54
2506
.53
US
NO
.2 y
ello
wN
ethe
rlan
dsC
hica
goD
olla
r/M
T37
7.20
372.
9038
5.60
409.
2042
6.00
456.
4041
2.00
420.
9039
7.10
407.
9039
1.80
412.
30R
s./Q
tl25
68.3
525
49.8
925
79.6
627
18.7
228
52.0
730
68.8
327
60.8
128
20.4
526
53.4
227
28.8
526
93.6
327
97.0
4
SU
NF
LO
WE
RR
efin
ed b
leac
hed
U.K
.
-P
ound
/MT
674.
0072
0.00
720.
0072
0.00
720.
0072
0.00
746.
0074
8.00
781.
0083
8.00
813.
0082
2.00
SE
ED
OIL
and
deod
oris
edR
s./Q
tl65
91.7
268
57.2
868
00.4
069
89.0
470
69.6
870
48.0
865
78.9
766
13.0
767
65.0
268
39.7
669
60.0
968
50.5
5ex
-tan
ks,
brok
erpr
ice
Whe
atU
.S.A
.C
hica
goC
/60
lbs
476.
5044
2.75
463.
0047
4.25
466.
0045
8.75
414.
7540
4.00
403.
2541
1.50
401.
5039
9.50
Rs.
/Qtl
1190
.73
1111
.10
1136
.77
1156
.39
1144
.99
1132
.06
1019
.98
993.
5498
8.89
1010
.33
1013
.03
994.
65
Sou
rce
- P
ubli
c L
edge
r
For
eign
Exc
hang
e R
ates
Cur
renc
yJA
NFE
BM
AR
AP
RM
AY
JUN
JUL
AU
GS
EP
OC
TN
OV
DE
C
Can
Dol
lar
48.5
249
.90
50.6
552
.93
51.6
052
.40
50.9
551
.89
50.8
049
.98
50.9
650
.32
UK
Po
un
d97
.80
95.2
494
.45
97.0
798
.19
97.8
988
.19
88.4
186
.62
81.4
385
.61
83.3
4
US
Dol
lar
68.0
968
.38
66.9
066
.44
66.9
567
.24
67.0
167
.01
66.8
266
.90
68.7
567
.84
12
34
56
78
91
01
11
21
31
41
51
61
7
50 Agricultural Situation in India
Crop Production
4. SOWING AND HARVESTING OPERATIONS NORMALLY IN PROGRESS DURING MARCH, 2017
State Sowing Harvesting
1 2 3
Andhra Pradesh Summer Winter rice, Summer rice, Jowar (R), Maize (R), Ragi(R), Wheat, Barley, Small Millets (R), Gram, Tur (K)other Kharif Pulses Urad (R), Mung (R), Other RabiPulses, Sugarcane, Chilies (Dry), Castorseed, Linseed,Cotton, Turneric, Onion (2nd crop), Tapioca
Assam Small Millets (R), Summer Potato Wheat Gram,Tur(K), Urad (R), Tobacco, Rapeseed(Hills), Sugarcane, jute, Mesta and Mustard, Linseed
Bihar Jute Wheat, Barley, Gram, Tur(K), Winter Patato (Plains),Sugarcane, Rapeseed and Mustard, Linseed Wheat,Barley, Gram, Tur (K), Winter Potato.
Gujarat Sugarcane Sugarcane, Chillies (Dry), Castorseed, Rapeseed andMustard, Cotton, Onion
Himachal Pradesh Sugarcane, Cotton Rapeseed and Mustard, Linseed Winter Rice, Jowar(R), Wheat, Gram, Urad (R), Mung (R), Winter Potato(Plains), Summer Potato
Karnataka Sugarcane (Plains), Sugarcane, Linseed, Cotton, Turmeric,Cardiseed, Onion
Kerala Sugarcane, Sesamum (1st crop), Summer Rice, Sesamum (3rd crop), Cotton, SweetTapioca (2nd crop) Potato Jowar (R), Wheat, Barley Small Millets (R),
Gram, Tur, Urad (R), Mung (R), Other Rabi
Madhya Pradesh Sugarcane Pulses, Winter Potato, Sugarcane, Chillies (Dry),Tobacco, Castorseed, Rapeseed & Mustard, Linseed,sannhemp Cardiseed, Onion Jowar (R), Maize (r),Wheat Barley, Gram, Tur (K), Other Rabi Pulses,Chillies (Dry), Tobacco, Catorssed,
Maharashtra Sugarcane Rapeseed and Mustard, Linseed, Cotton, Cardiseed,Onion,
Manipur Maize, Jute Wheat, Gram, Castorseed, Rapeseed and Mustard,Linseed,
Orissa Sugarcane Bajra, Ragi, Wheat, Barley, Urad (R), Mung (R),
Rapeseed and Mustard,
Punjab and Haryana Winter Potato (Hills), Summer Gram, Tur(K), Summer Potato, Sugarcane,Potato (Hills), Sugarcane, Ginger, Castorseed, Rapeseed and Mustard, Linseed,Chillies (Dry), Tobacco, Turmeric, Onion Turmeric
Rajasthan Small Millets (R), Sugarcane Wheat, Barley, Gram, Tur (K), Urad (R), Mung (R),Other Rabi Pulses, winter Potato (Plains), Castorseed,Rapeseed and Mustard, Linseed
Tamil Nadu Summer Rice, Jowar (R), Sugarcane, Winter Rice, Jowar (R), Bajra, Ragi, Small MilletsGroundnut (Early), Sesamum, Onion (K), Mung (K), Other Rabi Pulses (Kulthi), Winter
Potato, Sugarcane, Tobacco, Castorseed, Sesamum(Late), Cotton, Onion
Tripura Autumn Rice, Sugarcane, Summer Rice, Urad (R), Mung (R), Other RabiSesamum, Cotton Jute Pulses, Winter Potato (Plains), Sugarcane, Chillies
(Dry), Rapeseed and Mustard, Wheat Barley, SmallMillets (R) Gram, Tur (K),
Uttar Pradesh Small Millets(R), Sugarcane, Winter Potato (Hills), Ginger, Tobacco, Casterseed,Ginger, Jute, Mesta, Tapioca Rapeseed and Mustard, Linseed, Sweet Potato,
Onion, Tapioca Wheat, Barlery, Gram, Tur (K), Urad(R), Other Rabi
West Bengal Autumn Rice, Sugarcane, Ginger, Pulses, Winter Potato (Plains, Sugarcane, Ginger,Sesamum, Jute Tobacco, Sesamum, Rapeseed and Mustard, Chillies
(Dry)
Delhi Sugarcane, Tobacco, Jute Barley, Gram, Sugarcane, Tobacco
4. SOWING AND HARVESTING OPERATIONS NORMALLY IN PROGRESS DURING MARCH, 2016—CONTD.
1 2 3
February, 2017 51
GMGIPMRND—4829AGRI(S3)—16.03.2017.